Langue du cours : Anglais
Description du contenu de l'enseignement :
Our aim in this course is to implement some key concepts in quantitative finance using popular Python packages such as :
The data we will use is extracted from free online sources (Google, Yahoo, ...). The main parts of the course are the following :
1. Python basics : Data types, data structures, programs structure and packages.
2. Numpy, Matplotlib : discovering these packages with application to Monte Carlo simulation (look at the potential evolution of asset prices over time/Random walk).
3. Scipy : Introduction and application to a regression analysis of stock prices.
4. Pandas and Matplotlib. Introduction and Application (I) : importing, visualizing and analysing Time series financial data.
5. Pandas and Matplotlib. Advanced aspects and application (II) : Volatility calculation, Algorithmic trading, Creating, testing and improving a trading strategy.
Compétences à acquérir :
Mastering the structure of the Python language, a good knowledge of the most important libraries for financial applications (Numpy, Matlplotlib, Scipy, Pandas).
Pré-requis obligatoires
Basics of algorithmics.
Mode de contrôle des connaissances :
Several programming assignments (one for each class).
Coefficient : 1
Langue du cours : Anglais
Description du contenu de l'enseignement :
Lecture 1 and 2: Introduction to MATLAB. Tutorial with numerical optimization of Rosenbrock’s function and simulation of the Brownien Motion. Markowitz portfolio optimization.
Lecture 3: Binomial options pricing model. European, American, Butterfly and Barrier Knock - Out options. Simulation of a Binomial tree and assets trajectories.
Lecture 4: Black and Scholes Model. Monte-Carlo method for option valuation. European option. Correlated Brownian motions. Basket et Exchange options.
Lecture 5: Black and Scholes Model. Strongly Path-dependent options. Asian option. Lookback and Choosers. Stochastic volatility models. Euler-Maruyama approximation of Stochastic Differential Equations. Option and asset pricing in the Heston model.
Lecture 6 and 7: Merton Model. Poisson distribution. Simulation of assets trajectories with jumps. Option pricing in the Merton model.
Compétences à acquérir :
The students will learn important principles of implementation of financial models and master algorithms of evaluation of different types of derivative securities: European, American, standard, barrier and path dependent options on stocks.This course gives a comprehensive introduction to Monte Carlo and finite difference methods for pricing financial derivatives. At the end of the course, the student should have a thorough understanding of the theory behind Monte Carlo methods, be able to implement them for a range of applications, and have an appreciation of some of the current research areas.
Pré-requis recommandés
The notions of stochastic calculus, Black and Scholes models, Ito's formula.
Mode de contrôle des connaissances :
Control of Knowledge: Defense of a Project.
Coefficient : 1
Bibliographie, lectures recommandées :
Reading List: 1) S E Shreve, Stochastic Calculus for Finance II: Continuous-Time Models, Springer 2004. 2) P Glasserman, Monte Carlo Methods in Financial Engineering, Springer-Verlag, 2004. 3) P Wilmott, S D Howison and J Dewynne, Mathematics of Financial Derivatives, CUP, 1995.
ECTS : 3
Enseignant responsable : GAELLE LE FOL (https://dauphine.psl.eu/recherche/cvtheque/le-fol-gaelle)
Langue du cours : Anglais
Description du contenu de l'enseignement :
This course is an introduction and/or refresher course in Econometrics that focuses on techniques for estimating regression models, on problems commonly encountered in estimating such models, and on interpreting the estimates. The goal is to provide participants with the basic skills and knowledge necessary to undertake empirical research and to prepare them to the advanced course in Econometrics of Financial Markets. If Gretl will be the econometric software used in the course, it is possible to use Python or R.
Course outline
Compétences à acquérir :
Theoretical and practical knowledge of linear regression models estimation technics. Being able to set up an econometric analysis.
Pré-requis obligatoires
Mathematics and Statistics (bachelor level)
Pré-requis recommandés
First course in programming
Bibliographie, lectures recommandées :
Pre-requisites:
Langue du cours : Anglais
Description du contenu de l'enseignement :
Context This course is dedicated to students who have not studied the financial structure of the firm and practiced corporate finance. In that context, it presents the central place of valuation in finance and the usefulness of financial theory to deal with it properly.
Table of contents
Session 1: Introduction to the concept of value creation and financial analysis
Lecture: 3 hours
Definition and importance of corporate finance
Maximising shareholder value
Reading and interpreting financial statements
Analysis of financial ratios: liquidity, solvency, profitability
Session 2: Investment decision
Lecture: 3 hours
Analysis of investment projects: NPV, IRR, payback period
Investment portfolio management
Session 3: Financing decision 1/2
Lecture: 3 hours
Sources of financing: equity, debt and leverage effect
Cost of capital: cost of equity, cost of debt, weighted average cost of capital (WACC)
Session 4: Financing decision 2/2
Lecture: 3 hours
Optimal capital structure: Modigliani-Miller, Hamada theories
Session 5: Company valuation 1/2
Lecture: 3 hours
Valuation techniques: patrimonial approach, comparables method, Discounted Cash flow method (part 1)
Session 6: Company valuation 2/2
Lecture: 3 hours
Valuation technique: Discounted Cash flow method (part 2)
Structuring of a Leverage Buy Out
Session 7: Revision for the final exam
Lecture: 3 hours
Practical case studies
Compétences à acquérir :
- Understand the fundamentals of corporate finance and their practical application
- Develop skills in financial evaluation and financial resource management
- Analyse a company's investment and financing decisions
- Understand the concepts of financial risk management
- Study financial strategies for maximising shareholder value
Pré-requis obligatoires
As this is an introductory course for beginners and part of a curriculum that will include more advanced courses in the discipline, no pre-requisites are required.
Pré-requis recommandés
Fundamental notions in accounting : accrual accounting principle, double part, exercise concept
Mode de contrôle des connaissances :
Test after the last course (2 hours)
Coefficient : 1
Bibliographie, lectures recommandées :
Vernimmen P., Quiry, & Le Fur Y. (2025), Corporate finance, Wiley
Berk J. & DeMarzo P. (2020), Corporate Finance, Pearson
Brealey R. A., Myers, S. C. & Allen, F. (2017), Principles of Corporate Finance, Mc Graw Hill
ECTS : 6
Enseignant responsable : RENE AID (https://dauphine.psl.eu/recherche/cvtheque/aid-rene)
Langue du cours : Anglais
Description du contenu de l'enseignement :
Asset pricing, contingent claim, stochastic process, brownian motion, Itô's formula, optimal stopping time. This course is an introduction to "Derivative pricing and stochastic calculus II". It introduces the standard concepts and tools allowing to understand arbitrage theory in continuous-time. The requirements from probability theory are made as basic as possible to make the lectures accessible to studends without a strong background in applied mathematics.
Compétences à acquérir :
In the end of this course, the students must be comfortable with:
i) Basic concepts of contingent claims,
ii) the binomial model;
iii) stochastic integrals and Itôs calculus;
iv) the Black and Scholes model,
v) Merton's optimal porfolio problem.
Coefficient : 1 (Master Finance)
3ECTS - Coefficient 1 (M2 Quantitative Economics)
Bibliographie, lectures recommandées :
Steven Shreve, Stochastic Calculus for Finance I: The Binomial Asset Pricing Model, 2005. Steven Shreve, Stochastic Calculus for Finance II: Continuous-Time Models , 2005.
ECTS : 3
Enseignant responsable : JEROME DUGAST (https://dauphine.psl.eu/recherche/cvtheque/dugast-jerome)
Langue du cours : Anglais
Description du contenu de l'enseignement :
In this course, we will discuss a wide range of topics ranging from optimal portfolio, the CAPM, factor models, consumption-based asset pricing, and arbitrage pricing, to more special ones including asymmetric information, and limits to arbitrage.
Compétences à acquérir :
Master the theoretical concepts of asset pricing
Mode de contrôle des connaissances :
Evaluation: assignment 20%, final exam 80%
Coefficient : 2
ECTS : 6
Enseignant responsable : DELPHINE LAUTIER (https://sites.google.com/site/delphinelautierpageweb/)
Langue du cours : Anglais
Description du contenu de l'enseignement :
The term structure is defined as the relationship between the spot price and the futures prices of a derivative instrument, for any delivery date. It provides useful information for hedging, arbitrage, investment and evaluation: it indeed synthesizes the information available in the market and the operators’ expectations concerning the future price of the underlying asset.
In many derivative markets, especially in interest rates and in commodity markets, the concept of term structure is very important, because the contract’s maturity increases as the markets come to fruition. In the US 3-months interest rate futures market, for example, the maturities reach 10 years. In this course, the commodity markets will be often taken as an example, to help understanding. Extensions to other assets will be done, as much as possible.
Chapter 1 presents a general introduction to derivatives today.
Chapter 2 examines the traditional theories of commodity prices and the explanation of the relationships between spot and futures prices. It proposes an empirical review of the results obtained through these frameworks and explains why these theories are still investigated today. It finally shows how to apply these theories to other assets: exchange rates and interest rates.
The traditional theories are however a bit limited when the whole term structure is considered. As a result, there is a need for a long-term extension of the analysis, which is the very subject of the Chapter 3. We first present a dynamic analysis of the term structure. Then the focus turns towards term structure models. The examples rely on the case commodity prices but can be extended to interest rates. Simulations highlight the influence of the assumptions concerning the stochastic process retained for the state variables and the number of state variables. We then explain the econometric method usually employed for the estimation of the parameters. In the presence of non-observable variables, there is a need for filtering techniques. We present the method of the Kalman filters. Finally, we study two main applications, i.e. dynamic hedging and investment valuation.
Chapter 4 is devoted to the study of structural models, ie micro-founded equilibrium models that also examine the interactions between the physical and the derivative markets. In this situation the spot price becomes endogenous. The interactions between prices are studied thanks to rational expectations equilibriums.
Compétences à acquérir :
At the end of this course, the students must have a broad knowledge about the term structures of derivative prices: the theories, the valuation methods, the econometric techniques, the empirical tests as well as the applications.
They will also be trained to use their knowledge on this topic in order to develop a critical view on recent research articles.
This course is mandatory for all students enrolled in the cursus PhD Qualifying Year. It is optional for all other students of the M2 104.
Pré-requis recommandés
Students who choose this course must also attend the course “Finance in continuous time”
Mode de contrôle des connaissances :
Ongoing assessment, 20% One final exam, 80%.
Coefficient : 1
Bibliographie, lectures recommandées :
- Danthine J.P., Donaldson J.B., Intermediate Financial Theory, 2d Ed., Elsevier, 2005. - Hull J., Options, futures and other derivatives, 9th Ed. - Kolb R.W. , Overdahl J.A. , Futures, options, and swaps, 5th Ed., Blackwell, 2007. - Williams J., The economic function of futures markets, Cambridge University Press, 1986 - Wilmott P., Paul Wilmott on Quantitative Finance, 3-volume set, 2nd Ed., Wiley, 2006. Adresse du site de l'enseignant : https://sites.google.com/site/delphinelautierpageweb/
ECTS : 6
Enseignants : EDITH GINGLINGER, LUC RENNEBOOG
https://dauphine.psl.eu/recherche/cvtheque/ginglinger-edith
Langue du cours : Anglais
Description du contenu de l'enseignement :
Part 1. Prof. Laurent Frésard (Laurent.fresard@usi.ch)
Course Objectives
The objective of this part of the “Corporate Finance” course is to introduce you to key topics in corporate finance through the lens of empirical research. Corporate finance is largely a non-experimental field with lots of data. The nature, scope, and detail of available data continue to expand rapidly. These data are used to generate empirical insights to validate or invalidate existing theories and constitute a basis for further theories. In this class, we will discover central topics and mechanisms in corporate finance by focusing on how researchers have used data and empirical methods to develop novel knowledge that is relevant for the practice of finance.
The overall approach in this class is to read and understand (selected) prior empirical work and replicate or extend some of these studies. The topics have been selected to make you work with specific datasets and methods. The primary expertise necessary is the understanding of how to use or manipulate datasets. You will need to appreciate the methods, approaches, and intuition of econometrics including and beyond a first graduate level of econometrics. I will cover some of the underlying approaches in class but our objectives will be different from those of an econometric course. Rather than a formal derivation of the underlying assumptions and tests, we will assess why something works the way it does.
Deliverables - Empirical exercises
You will have three exercise sets and a mini project to hand in. They are designed to get you up and running with financial datasets and empirical methods. There is a lot of work going into extracting databases and matching datasets. You should treat this as a permanent lifelong investment and the costs will seem more bearable. You will have to extract data from the relevant source, run the assigned tests, and answer to question I will specify. You will write a short report for each assignment, explaining all your steps and interpreting your results.
Course outline and Readings
All chapters and articles marked with an * should be carefully read in advance. As we will discuss these papers in class, not reading makes your attendance almost useless. I will ask questions related to these articles in class.
Reading list for part 1. COURSE
Identification and Causality Event studies Instrumental Variables Difference-in-Differences Regression Discontinuity Design Textual Analysis Part 2. Luc Renneboog
Part 2, Executive Remuneration Contracting
Compétences à acquérir :
The objective of this course is twofold: a. to introduce the student to state of the art econometrics applied in empirical corporate finance (e.g. to address endogeneity issues, to determine an identification strategy), b. to introduce the student to some important topics in theoretical corporate finance.
Pré-requis obligatoires
Introduction to corporate finance
Mode de contrôle des connaissances :
Part 1. The evaluation for the class consists of a project (45%) and a written final exam (55%).
Part 2. Written Exam (50%)
Coefficient : 1
ECTS : 6
Enseignant responsable : JULIEN CLAISSE (https://dauphine.psl.eu/recherche/cvtheque/claisse-julien)
Langue du cours : Anglais
Description du contenu de l'enseignement :
The aim of this lecture is to present the theory of derivative asset pricing as well as the main models and techniques used in practice. The lecture starts with discrete time models which can be viewed as a proxy for continuous settings. We then develop on the theory of continuous time models. We start with a general Itô-type framework and then specialize to different situations: Markovian models, constant volatility models, local and stochastic volatility models. For each of them, we discuss their calibration, and the valuation and the hedging of different types of options (plain Vanilla and barrier options, American options, options on realized variance,...).
Course outline:
I. Discrete time modelling
I.1. Financial assets I.2. The absence of arbitrage I.3. Pricing and hedging of European options I.4. Pricing and hedging of American options
II. Continuous time modelling
II.1. Financial assets as Itô processes II.2. The Black-Scholes model II.3. Markovian models in complete markets II.4. Local volatility models II.5. Stochastic volatility models
Compétences à acquérir :
The lecture starts with discrete time models which can be viewed as a proxy for continuous settings, and for which we present in detail the theory of arbitrage pricing. We then develop on the theory of continuous time models. We start with a general Itô-type framework and then specialize to different situations: Markovian models, local and stochastic volatility models. For each of them, we discuss the valuation and the hedging of different types of options : plain Vanilla and barrier options, American options, options on realized variance, etc. Finally, we present several specific volatility models (Heston, CEV, SABR,...) and discuss their specificities.
Pré-requis obligatoires
Students must have past Financial Derivatives and Derivative Pricing & Stochastic Calculus 1.
Mode de contrôle des connaissances :
Final exam
Bibliographie, lectures recommandées :
Bouchard B. et Chassagneux J.F., Fundamentals and advanced Techniques in derivatives hedging, Springer, 2016. Lamberton D. et B. Lapeyre, Introduction au calcul stochastique appliqué à la finance, Ellipses, Paris, 1999.
ECTS : 6
Enseignant responsable : OLIVIER TOUTAIN (https://dauphine.psl.eu/recherche/cvtheque/toutain-olivier)
Langue du cours : Anglais
Description du contenu de l'enseignement :
This course is an introduction to Credit Risk in its different dimensions (Default/Recovery/Transition), starting from a description of the phenomenology of Credit Risk, the different intruments subject to credit risk to the different modelling approach both for single name or portfolio exposure. Numerous concrete examples illustrate the concepts introduced and the mathematical model are studied through exercises. The aim is to cover the broad domain of credit risk from retail products (credit card, mortgages) to sovereign credit risk, looking at the existing practicla issues that students would have to solve in their future employment either as Risk Managers, Traders, Asset Managers, Credit Risk Officer, Analysts, ...
A book covering the different concepts presented in class is made available and corrected exercise are also available to the students.
Compétences à acquérir :
The key concepts pertaining to credit risk should be understood by students and a solid framework would allow an easier analysis of credit risk and its management in their future job.
Pré-requis recommandés
Basic knowledge of fixed income products and interest rate notions.
Basic knowledge of probability / statistics is a plus (Theorem of Total Probability, Law of Large Number, Markov Chain, Univariate distributions)
Mode de contrôle des connaissances :
A final exam mixing (i) questions on topic seen during the class and (ii) quantitative exercises to measure credit risk.
Coefficient : 1
Bibliographie, lectures recommandées :
Credit Risk - Pricing, Measurement, and Management - Darrelle Duffie - Princeton Universirty Press Credit Risk Modeling - David Lando Credit Risk - Tomasz Bielecki, Marek Rutkowski
ECTS : 6
Enseignant responsable : AYMERIC KALIFE (https://dauphine.psl.eu/recherche/cvtheque/kalife-aymeric-1)
Langue du cours : Anglais
Description du contenu de l'enseignement :
Interest rate derivatives, investment and hedging
The objective of the course is to give an all round comprehensive knowledge and understanding of the theory and the day-to-day use of interest rates derivatives, for both investment and hedging purposes.
Various views about the level and shape of the yield curve are implemented with selected absolute and relative value trades. across “Directional” and “Volatility” strategies.
Finally, this course introduces to the the sustainable investing landscape (“ESG”) which has met some growing and significant appetite over the past decade, while providing insights and methodology for managing fixed income ESG investment strategies.
Compétences à acquérir :
Participants will learn how banks, portfolio managers and corporate treasuries use rates derivatives alike in the management of risks, for trading, hedging and arbitrage and their role in the day-to-day running of the finances of businesses.
Mode de contrôle des connaissances :
Take home exam: trade idea Table exam
Coefficient : 1
Bibliographie, lectures recommandées :
Fixed-Income Securities: Valuation, Risk Management, and Portfolio Strategies, Lionel Martellini, Philippe Priaulet Fixed Income Analysis, CFA institute, Barbara S. Petitt (Author), Jerald E. Pinto, Wendy L. Pirie, Bob Interest Rate Risk Modeling, Wiley, Sanjay K. Nawalkha, Gloria M. Soto, Natalia A. Beliaeva Fixed Income Mathematics, Analytical & Statistical Techniques, Frank J. Fabozzi
ECTS : 6
Enseignant responsable : DAVID ETTINGER (https://dauphine.psl.eu/recherche/cvtheque/ettinger-david)
Langue du cours : Anglais
Description du contenu de l'enseignement :
Chapter 1: Normal form games: pure and mixed strategy Nash equilibrium; weakly/strictly dominated strategies , iterated elimination of dominated strategies.
Chapter 2: Dynamic games: Backward induction, subgame perfect Nash equilibrium, repeated games.
Chapter 3: Incomplete information (in static games): Bayesian Nash equilibrium; introduction to some applications (auctions, finance...)
Compétences à acquérir :
The objective of the course is to give some fundamental background in interactive decision making and its applications. After having attended the classes, the students will be able to understand the basic tools of game theory and the importance of this field in economics and finance.
Pré-requis obligatoires
The student must be at ease with some basic mathematical notions such as: derivations, first-order conditions...
Mode de contrôle des connaissances :
A mid-term exam and a final exam
Coefficient : 1
ECTS : 3
Enseignant responsable : JEROME DUGAST (https://dauphine.psl.eu/recherche/cvtheque/dugast-jerome)
Langue du cours : Anglais
Description du contenu de l'enseignement :
Syllabus: 1. Equilibrium in an Exchange Economy 2. Decision Making under Uncertainty 3. Equilibrium in Markets for Securities 4. Investment Decision under Market Imperfections: the Principal-Agent Problem
Compétences à acquérir :
This 24 hours course aims at acquainting students with relevant microeconomics methods to tackle finance issues.
Pré-requis recommandés
Basic notions of mathematical analysis and algebra are required.
Mode de contrôle des connaissances :
Final exam and assignment
ECTS : 3
Enseignant responsable : PIERRE BRUGIERE (https://sites.google.com/view/pierrebrugiere/home)
Langue du cours : Anglais
Description du contenu de l'enseignement :
· Introduction to statistical learning: The Vapnik Chervonenkis dimension, PAC learning and the calibration versus prediction paradigm.
· Primal and Dual Problem, Lagrangian and KKT conditions
· Supervised learning: SVM, Mercer’s theorem and the kernel trick, C-SVMs, mu-SVMs, a few words on SVMs for regressions.
· Unsupervised learning: Single class SVMs, clustering, anomaly detection, equivalence of different approaches via duality.
· Introduction to random forests and ensemble methods: bias variance trade-off, bootstrap method
· Remarks on parsimony and penalisation: Ridge and Lasso regressions, dual interpretation of Lasso.
Compétences à acquérir :
To understand the principles of supervised and unsupervised learning. Some Statistical Learning results are presented and applied to credit rating, anomalies detection and yield curves modelling. The principal notions are presented in the context of these case studies in finance.
Pré-requis obligatoires
Basic linear algebra and differential calculus.
Pré-requis recommandés
Basic linear algebra and differential calculus.
Mode de contrôle des connaissances :
Exam
Coefficient : 1
Bibliographie, lectures recommandées :
[1] James, Hastie, Witten, Tibshirani, Taylor; An introduction to Statistical Learning: file: https://hastie.su.domains/ISLP/ISLP_website.pdf.download.html
[2] A Burkov; The hundred-pages machine learning book : chrome-extension://efaidnbmnnnibpcajpcglclefindmkaj/http://ema.cri-info.cm/wp-content/uploads/2019/07/2019BurkovTheHundred-pageMachineLearning.pdf
ECTS : 3
Enseignant responsable : THIBAULT GODBILLON (https://dauphine.psl.eu/recherche/cvtheque/godbillon-thibault)
Langue du cours : Anglais
Description du contenu de l'enseignement :
Banks, and the financial sector more broadly, operate in a highly regulated environment. Financial regulations have evolved over time, in response to key events, such as the 2008 Global Financial Crisis, emerging risks (e.g., data, cyber security, FinTech, etc) and more recently the COVID19 pandemic, or the failure of SVB and Credit Suisse. Regulations have broadened to encompass all parts of the financial system: banks and non-banks--insurers, market infrastructures, credit rating agencies, hedge funds, etc. Global policymakers (including BCBS, FSB, IOSCO) have developed international standards to support the G20 mandate--ensuring the stability and resiliency of the global financial system. At the local and regional level (in the EU for instance), prudential and market regulators are tasked with transposing these global standards in their own framework, which may cause some variations in the way regulations are implemented across jurisdictions. This lecture aims to provide students with an understanding of the global regulatory architecture, ensure they understand where regulations come from, and how to stay up-to-date with a complex and constantly evolving topic. The course will also provide students with an overview of the current rules and regulations applying to banks and financial market operators in general. Via the drafting of a two-page note on a specific topic from the course, students will practice their written English communication and capacity to summarise complex matters. Finally, via the participation of experts from various background, the course will provide students with an insight into working for global organisations. Course outline: 1) An introduction to financial regulations 2) Prudential regulations (Basel standards, CRD/CRR, DFA) 3) Crisis management (FSB standards, BRRD/CMDI, DFA) 4) Overview of Market regulations (International standards, MIFID/EMIR) 5) Sustainable Finance (Key risks, FSB/BCBS standards, EU taxonomy/GBS/ SFDR) 6) Digital Finance (Key risks, FSB/BCBS standards, DORA/MiCAR) 7) Outro (Wrap-up, critical considerations on financial regulations)
Compétences à acquérir :
Master the regulatory prudential and market reforms, at the global level and across regions
Mode de contrôle des connaissances :
Each students will be asked to prepare a two page note aimed at summarising a key issue of the programme.
ECTS : 3
Enseignant responsable : AYMERIC KALIFE (https://dauphine.psl.eu/recherche/cvtheque/kalife-aymeric-1)
Langue du cours : Anglais
Description du contenu de l'enseignement :
Structured products, evaluation and control.
This course is an initiation to new structured products. It shows how to value such products, and how to control the associated risks
Compétences à acquérir :
Participants will lear how financial institutions can build and structured products, how they value them, and what they are done for.
Coefficient : 1
Langue du cours : Anglais
Description du contenu de l'enseignement :
Content: This course is mandatory for the students enrolled in the cursus Phd Qualifying Year. It is optional for all others.
Compétences à acquérir :
The course Frontiers in Finance is a serie of seminars, proposed by academics of the university PSL Paris Dauphine. Most of them are members of the research team DRM-Finance.
The aim of this course is to present the different steps of an academic career (sessions 1 and 2) and to offer a view on recent researches in finance performed by the members of the team (all other sessions). This is an open view on what could be done after the M2 104, as well as on the state of the art in finance.
This course is mandatory for the students enrolled in the cursus Phd Qualifying Year. It is optional for all others.
Mode de contrôle des connaissances :
None
ECTS : 3
Enseignant responsable : JEROME DUGAST (https://dauphine.psl.eu/recherche/cvtheque/dugast-jerome)
Langue du cours : Anglais
Description du contenu de l'enseignement :
The field of market microstructure combines theoretical modeling, institutional knowledge, and empirical analysis to understand how prices result from the interactions of traders in financial markets. The course aims to acquaint students with (i) the canonical models in microstructure, and (ii) econometric models used to test the predictions of those models. Course structure:
Compétences à acquérir :
Master the concepts of financial markets microstructure
Mode de contrôle des connaissances :
Evaluation: assignment and final exam
Coefficient : 1
Bibliographie, lectures recommandées :
Foucault, Thierry, Marco Pagano, and Ailsa Röell, Market Liquidity: Theory, Evidence, and Policy, Oxford University Press, 2013.
ECTS : 3
Enseignant responsable : GILLES CHEMLA (https://dauphine.psl.eu/recherche/cvtheque/chemla-gilles)
Langue du cours : Anglais
Description du contenu de l'enseignement :
Recent developments in the theory of corporate finance To follow this course, the students must validate the course "Corporate finance". Course objective : the main objective of the course is to familiarize students with a number of important, recent results and subjects that have been added to the theory of corporate finance. A second important objective is to provide an overview of some of the modelling issues faced and of the methods that are currently employed in the area of corporate finance
Compétences à acquérir :
The students will master the most recent reserach issues in corporate finance, with specific insights into modelling.
Coefficient : 1
ECTS : 3
Enseignant responsable : Mattia GIROTTI (https://drm.dauphine.fr/fr/drm/membres/detail-cv/profile/mattia-girotti.html)
Langue du cours : Anglais
Description du contenu de l'enseignement :
This is a practical course that leverages empirical corporate finance tools to analyze financial intermediation, and in particular, the access to credit of firms. The course is organized in chapters, each covering a specific aspect of banking. Each chapter discusses selected papers by placing attention on the data and the methodology employed.
Session Topic
1 Introduction to banking analysis
2 Borrower-lender relationship
3 Banking competition
4 Bank capital regulation
5 Bank funding
6 Crises and bank lending
7 Monetary policy and banks
8 Project Presentations
Compétences à acquérir :
By the end of the course, students will be able to empirically investigate research questions pertaining to banking. This includes collecting data, designing an empirical strategy, analyzing data with an econometric software (the course will focus on Stata), and organizing the results in both a paper and slides.
Pré-requis obligatoires
A good knowledge of corporate finance and econometrics is required.
Mode de contrôle des connaissances :
Presentation and discussion of academic papers in groups of maximum two people (40%) + Empirical project in groups of maximum two people (presentation 20%, written document 40%).
Coefficient : 1
Bibliographie, lectures recommandées :
Lecture notes are the main course material. In addition, these optional textbooks are recommended for this course:
- Degryse, Hans, Moshe Kim, and Steven Ongena, Microeconometrics of Banking: Methods, Applications, and Results. Oxford University Press, 2009.
- Roberts, Michael, and Toni Whited, Endogeneity in Empirical Corporate Finance, 2013.
- Angrist, Joshua D, and Jörn-Steffen Pischke, Mostly harmless econometrics: An empiricist's companion, Princeton University Press, 2009.
- Saunders, Anthony, Marcia Millon Cornett, and Otgo Erhemjamts, Financial institutions management: A risk management approach. McGraw-Hill, 2021.
ECTS : 3
Enseignant responsable : JUAN FELIPE IMBET JIMENEZ (https://amandri.github.io/)
Langue du cours : Anglais
Description du contenu de l'enseignement :
The course will cover the necessary tools in order to conduct independent research in asset pricing, focusing on the relation between theoretical and empirical explanations of prices, and risk. Econometrics, equity returns, return predicability, discount factors, betas, mean-variance frontiers, GMM, testing asset pricing models, the cross-section of expected returns.
Compétences à acquérir :
Understanding of theory and empirics of asset pricing research, with a focus on how to bring models to the data.
Pré-requis recommandés
Econometrics, Asset Pricing Theory, Linear Algebra, and Macroeconomics
Mode de contrôle des connaissances :
Homeworks and Participation 30%
Final Exam 70%
Coefficient : 1
ECTS : 3
Enseignants : SABRINA BUTI, JEROME DUGAST, CAROLE GRESSE, FABRICE RIVA
https://dauphine.psl.eu/recherche/cvtheque/buti-sabrina
https://dauphine.psl.eu/recherche/cvtheque/dugast-jerome
https://www.marchesdetauxdinteret.fr/
https://dauphine.psl.eu/recherche/cvtheque/riva-fabrice
Langue du cours : Anglais
Description du contenu de l'enseignement :
1. Liquidity and Asset Prices
2. Limit Order Markets and OTC Markets: a Review of Theory
3. Market Transparency
4. Market Fragmentation
5. Algorithmic Trading and High-Frequency Trading
6. Microstructure and Corporate Finance
7. Information Technologies, Big Data, and Financial Markets
Compétences à acquérir :
The course aims to acquaint students with advanced topics in market microstructure.
Mode de contrôle des connaissances :
Referee reports or paper replications
Coefficient : 1
ECTS : 3
Enseignant responsable : Yannick LE PEN ()
Langue du cours : Anglais
Description du contenu de l'enseignement :
This course will present the modelling and forecasting of time series. We will expose the main concepts and methodsapplied to univariate time series : stationnarity and unit roots, ARIMA models, univariate volatility models, forecasting. We will also present the methods for multivariate framework : VAR, Cointegration and VECM, Multivariate GARCH. The learning goal of this course is that students become able to engage in and conduct original research. It is also toprepare them to be professionals in careers that require training in econometrics. Outline
Compétences à acquérir :
After this course, the students should be able to produce their own empirical study with time series. They also should have acquired sufficient knowledge to read and understand more complex time series econometric methods.
Pré-requis obligatoires
The course assumes familiarity with statistics, probability and basic econometrics.
Mode de contrôle des connaissances :
The grade is based on an individual project.
Coefficient : 1
Bibliographie, lectures recommandées :
Brooks, C., Introductory Econometr cs for F nance, Cambridge University Press, 3rd edition 2014. Ghysels, E. and M. Marcellino,A ed Econom c Forecast ng s ng me er es Methods, Oxford University Press, 2018. Mills, T., et R.N. Markellos, R.N., he Econometr c Mode ng of F nanc a me er es, Cambridge University Press ; 3ème Édition, 2008 Additional references Campbell, J., A. Lo and C. MacKinlay, he Econometr cs of F nanc a Mar ets, Princeton Uni- versity Press, 1997 Bauwens L., Hafner C. et S. Laurent, Handboo of Vo at ty Mode s and the r A cat ons, John Wiley & Sons, 2012. Taylor, S. J., Asset Pr ce Dynam cs) Vo at ty and Pred ct on, Princeton University Press, 2007. Jondeau, E., Poon S.-H. et M.Rockinger, F nanc a mode ng under non-gauss an d str but ons, Springer. Linton, O., F nanc a Econometr cs) Mode s and Methods, Cambridge University Press, 2019
ECTS : 3
Enseignants : BERTRAND HASSANI, HOUCINE SENOUSSI
Langue du cours : Anglais
Coefficient : 1
ECTS : 3
Enseignant responsable : BERTRAND HASSANI
Langue du cours : Anglais
Description du contenu de l'enseignement :
Data science is an interdisciplinary field that is rapidly evolving. Many companies have widely adopted machine learning and artificial intelligence methods to power many applications that have captured the imagination of society at large. Data systems and data engineering are an inevitable part of all these large-scale data-driven applications and decisions, as ML/AI methods are powered by massive collections of potentially heterogeneous and messy datasets and, as such, should be managed as part of an organization's overall data lifecycle. This course corresponds to the third block of the Certificate “Fundamentals of Data Science”. This Certificate is designed to train and familiarize professionals with the key technologies in this interdisciplinary field, with the aim of enabling them to take full advantage of the opportunities offered by data science and to become active players in this field within of their organizations. This is an accelerated training focused on the key modules of the profession of data scientist, in particular the management of massive data and machine learning. Course outline: Module 1 : Why shall we engage a Data transformation program (1h)* - Introduction - The Role of Data in a company - Review of the evolution of Data topics - Data value chain - Presentation of the pillars of a Data transformation ( challenges / objectives) - The Data Strategy - Data Management & Governance - Analytics - IT - Project to Product team *Module 2: Data Management (4h)* - General presentation of the main concept of the framework (DAMA) - Structure & organization (roles & responsibilities) - Lineage & Metadata: data knowledge - The importance of data quality - Privacy / GDPR - Data types and their characteristics - Structured - Unstructured data - Examples of architectures - Main tools to manipulate Data *Module 3: Case Analysis - From Theory to Practice: data retrieved from both a database and an excel file. (10h)* - From integration to visualization - Integration of data from Excel file via Python - Representation, cleaning, recoding - Aggregates - Merge and join - *Practical work 1* - Data integration from the database - Relational model - Introduction to SQL - SQL in Python - *Practical work 2* - Beyond SQL, other possible cases (NoSQL) - Problems encountered when reconciling data (duplication, quality, veracity) > Can you put your trust into your data - *Practical work 3* - Using Artificial Intelligence to explore to power of Data - Presentation of some use cases and explanation: how does that work practically ?
Coefficient : 1
ECTS : 3
Enseignant responsable : HOUCINE SENOUSSI
Langue du cours : Anglais
Description du contenu de l'enseignement :
Basics of ML
Decision Trees :
Neural networks:
Reinforcement Learning :
Compétences à acquérir :
Building Machine Learning (ML) models for Finance problems. Using ML Python library (and in particular sickit-learn).
Pré-requis obligatoires
Python programming language.
Mode de contrôle des connaissances :
Two/Three assignments (building a model + Python programming).
Coefficient : 1
ECTS : 3
Enseignant responsable : ALBERTO MANCONI (https://dauphine.psl.eu/recherche/cvtheque/manconi-alberto)
Langue du cours : Anglais
Description du contenu de l'enseignement :
Introduce students to this relatively new sub-discipline of finance which incorporates insights from cognitive and social psychology into finance. In the past 20 years behavioral finance has emerged as an important stream of thinking in finance. Relaxing the traditional assumptions of finance models has proved a fruitful way of understanding financial decision-making. Course outline: The course will go through:
Compétences à acquérir :
Relaxing the traditional assumptions of finance models has proved a fruit ful way of understanding financial decision-making and anomalies found in empirical tests.
Mode de contrôle des connaissances :
Students will present a state-of-the art research paper among a selection of papers chosen by the instructors.
Bibliographie, lectures recommandées :
Daniel Kahneman, Paul Slovic, and Amos Tversky (eds.), Judgment under uncertainty: Heuristics and biases, Cambridge: Cambridge University Press, 1982. Richard Thaler, ed., Advances in behavioral finance, New York: Russell Sage Foundation, 1993. Richard Thaler, ed., Advances in behavioral finance, Volume II, New York: Russell Sage Foundation, 2005. Shleifer, Inefficient markets : an introduction to behavioral finance, Oxford, Oxford University Press 2000.
ECTS : 3
Enseignant responsable : VERONIKA SELEZNEVA (https://sites.google.com/view/veronikaselezneva/home)
Langue du cours : Anglais
Description du contenu de l'enseignement :
Course outline (tentative)
1. Deterministic dynamic optimization problems.
a. Firm’s hiring decision
b. Consumption & Savings Under Uncertainty
c. Theory of Investment
2. Asset pricing and risk.
a. Equity premium puzzle
3. Monetary economics.
a. Introducing money. Classical issues in monetary economics.
b. Introducing price setting. Monetary economics with frictions.
c. Monetary policy.
Compétences à acquérir :
This course studies the theoretical foundations of modern macroeconomics. The goal of the course is to develop intuition that can help us understand the dynamics of key macroeconomic variables and use formal models to derive policy implications. The students will be provided with the mathematical tools used in constructing dynamic stochastic general equilibrium models.
Pré-requis obligatoires
Intermediate macroeconomics and calculus.
Mode de contrôle des connaissances :
The grades will be determined as follows: homeworks, 10%; final project, together with its presentation, 90%.
Bibliographie, lectures recommandées :
The textbooks for the course are:
Additional reading materials and the related readings will be made available later.
ECTS : 3
Enseignant responsable : LOUIS BERTUCCI (https://dauphine.psl.eu/recherche/cvtheque/bertucci-louis)
Langue du cours : Anglais
Description du contenu de l'enseignement :
Although blockchain technology is a fairly recent concept, the rate of innovation in this space has been tremendous over the past years. This class will give students an overview of the fundamental concepts needed to properly understand most aspects around blockchains, with a focus on the Bitcoin and Ethereum blockchains. We will also cover the most recent advanced topics including : Consensus Algorithms (Proof-of-Work vs Proof-of-Stake), the scaling problem, Smart contracts as well as a detailed approach of Decentralized Finance (DeFi), Token economics (Fungible and Non-Fungible Tokens) and CDBC. The academic literature is also very dynamic and this class will heavily rely on this literature to explain in depth the main concepts. Although an academic approach will help students get a solid knowledge about blockchains, this class will also incorporate some practical training, including low-level bitcoin transaction scripting and smart contract development/deployment/interaction with Solidity. Even if this class is not directed to computer scientists, students will be expected to make the effort to learn about the most important computer science primitives needed to understand the economics of blockchain. Such primitives will be taught in class.
Compétences à acquérir :
Students are expected to get an in-depth understanding of the functioning of any blockchain and DeFi projects, as well as an awareness of most of the current important issues and recent developments. Students will also be exposed to the most important papers in the literature as well as some knowledge on practical aspects like the basics of smart contract development. Students are not expected to become smart contract developers but rather to know the basics of it, how it works and ultimately to be able to interact with actual smart contract developers.
Pré-requis obligatoires
Coding skills : Python development. Some knowledge in Javascript will also be a plus as Solidity, the most popular smart-contract development language, has a Javascript-like syntax, but this is not mandatory.
Knowledge in basic economics and Game Theory will also be a plus although not mandatory.
Mode de contrôle des connaissances :
Oral presentation (critical assessment of a chosen blockchain or DeFi project), Homework (coding, paper review) and/or final exam.
Coefficient : 1
Bibliographie, lectures recommandées :
Books :
Langue du cours : Anglais
Description du contenu de l'enseignement :
In this seminar, the students will learn:
Compétences à acquérir :
This course is an introduction to the methodology of research focused on the writing of a Master's thesis. Throughout the year, the students of the M2 104 have to work on their master’s thesis, which is a very important part of their formation.
The aim of the Master’s thesis is to produce an original piece of research work on a clearly defined topic within the investigative field of contemporary finance, under the guidance of one of the Masters’ Professors.
- For students considering a career in the industry, the Master’s thesis is a unique opportunity to demonstrate their scientific expertise in the field of finance and experience shows that employers highly value this research approach. In this case, the students work on a short-term master's thesis, up to July. In addition, they must find an internship.
- For students considering a doctoral thesis, the Master’s thesis enables them to get an initial feel for what research involves and is often the foundation for further investigation for a student’s doctorate. In this case, the students work on a long-term master's thesis, up to September. They do not have to find an internsip.
Mode de contrôle des connaissances :
The seminar is mandatory for all students of the M2 104. Their grades depend on the assiduity of the student and his /her ability to produce in due time, five documents. Each document represents one step in the writing of the Master’s thesis.
Document n°1 reveals the preferences of the students about the research subjects in which they are especially interested
Document n°2 gives a definition of the subject, in accordance with the supervisor of the Master's thesis
Document n°3 is a synthesis about the main references that will be needed to write the Master's thesis
Document n°4 is a first draft of the review of the litterature
Document n°5 is the Master's thesis
Coefficient : 4
Bibliographie, lectures recommandées :
Adresse du site de l'enseignant : https://sites.google.com/site/delphinelautierpageweb/
Langue du cours : Français
Langue du cours : Français
Langue du cours : Français
Langue du cours : Anglais
Description du contenu de l'enseignement :
Content of the certification: - Know the general principles of banking and financial law - Identify the role and operation of the various financial actors - State the main principles of French financial regulation - Master the fundamentals of the monetary and financial code and the general regulations of the AMF - Understand and explain the rules on client protection and the legal and ethical framework governing financial transactions, - Know the different means of payment and describe their main characteristics: cards, checks, transfers, direct debits. - Inform a client about the different types of financial instruments - Distinguish the different types of financial instruments used by customer - Know the organization and role of financial markets - Ability to read business financial statements - Get an overview of tax rules for businesses and individuals
Compétences à acquérir :
The AMF General Regulation requires investment services providers to verify that persons exercising certain functions under their authority or on their behalf have a minimum level of knowledge in 12 areas relating to the regulatory and ethical environment and financial techniques.
The AMF Certification is an online course proposed by an institution certified by the AMF. The M2 104 Research in Finance gives to some students the possibility to follow it and to validate the exam, during the second semester. The fees of the Certification are offered to the 5 students who obtained the highest grades during the 1rst Semester.
Mode de contrôle des connaissances :
One line examination / On site examination, at Dauphine, when possible
Langue du cours : Anglais
Description du contenu de l'enseignement :
The AMF Sustainable Finance examination consists of 60 multiple-choice questions (MCQs) and can only be administered by one of the AMF-certified organisations listed below. The pass mark is 80%.
The knowledge test lasts a maximum of one hour and a half on the following topics:
Compétences à acquérir :
The AMF Sustainable Finance examination is aimed in particular at sales professionals who wish to acquire a general understanding of the regulatory and economic framework governing sustainable finance. It enables them to understand the essential concepts and to acquire a frame of reference for the products and methodologies used, so that they can identify their clients’ sustainability preferences and thus offer them products tailored to their needs.
Mode de contrôle des connaissances :
On line examination
En savoir plus sur le cours : https://www.amf-france.org/en/news-publications/depth/amf-examination#AMF_Sustainable_Finance_examination