From Chapter 5 onward, we focus on financial mathematics, strictly speaking. We define essential financial vocabulary such as the concept of a financial asset, investment strategy and the concept of arbitrage. We also begin to establish a link with martingales. We also introduce a typical example of a discrete financial market: the Cox, Ross and Rubinstein binomial model, which acts as a guiding thread through all the following chapters. In particular, the question of Optimal Portfolio Management in this model is studied through guided work. This is a discretized version of the famous Merton problem, originally posed in the continuous Black and Scholes [MER 69] model. Chapter 6 introduces and studies the first large and specific category of conditional assets, i.e. European options. This is the simplest example of a financial asset which may be exercised subject to the realization of a certain condition. We examine, in detail, the question of the pricing and hedging of these options in the general case of a discrete financial market and then in the specific case of the Cox, Ross and Rubinstein model. Chapter 7 is dedicated to the study of a slightly more complex family of conditional assets: American options. We once again undertake a detailed study of the question of the pricing and hedging of these options and connect them to the theory of optimal stopping, in the general case of a discrete financial market and then in the specific case of the Cox, Ross and Rubinstein model.
The detailed solution to all the exercises and practical work are given together at the end of the book in Chapter 8.
1
Elementary Probabilities and an Introduction to Stochastic Processes
This chapter reviews the basic concepts related to probability and random variables which will be useful for the rest of this text. For a more detailed explanation as well as demonstrations, the readers may refer to [BAR 07, DAC 82, FOA 03, OUV 08, OUV 09] in French and [BIL 12, CHU 01, DUR 10, KAL 02, SHI 00] in English. The readers who are already familiar with these concepts may proceed straight to section 1.3, which introduces the concept of stochastic processes.
This chapter begins with a brief summary of the concepts of a σ-algebra in section 1.1. These concepts will help in understanding the construction of the properties of conditional expectation in Chapter 2. We then study the chief definitions and properties of random variables and their distribution in section 1.2. There is an emphasis on discrete random variables as this entire book essentially studies discrete cases. Section 1.3 defines a stochastic process, which is the main subject studied in this book. Finally, there are exercises in handling these different concepts in section 1.4. The solutions are given in Chapter 8.
Throughout the rest of the text, Ω is a non-empty set and
(Ω) denotes the set of the subsets of Ω :The set Ω is called the universe or the fundamental set. In practice, the set Ω contains all the possible outcomes of a random experiment.
1.1. Measures and σ-algebras
Let us start by reviewing the concept of a σ-algebra.
DEFINITION 1.1.– A subset
(Ω) is a σ-algebra over Ω if1 1) Ω ∈ ;
2 2) is stable by complementarity: for any A ∈ , we have Ac ∈ , where Ac denotes the complement of A in Ω: Ac = Ω\A;
3 3) is stable under a countable union: for any sequence of elements (An)n∈ℕ of , we have
Elements of a σ-algebra are called events.
EXAMPLE 1.1.– The set
, we clearly have .EXAMPLE 1.2.– The set
(Ω) is the largest σ-algebra over Ω; it is called the largest σ-algebra. Indeed, by construction, (Ω) contains all the subsets of Ω, and thus it contains in particular Ω and it is stable by complementarity and under countable unions. In addition, any other σ-algebra (Ω).DEFINITION 1.2.– Let Ω be a non-empty set and
be a σ-algebra over Ω. The couple (Ω, )