CHAPTER 8

LIMIT THEOREMS

The ability to draw conclusions about a population from a given sample and determine how reliable those conclusions are plays a crucial role in statistics. On that account it is essential to study the asymptotic behavior of sequences of random variables. This chapter covers some of the most important results within the limit theorems theory, namely, the weak law of large numbers, the strong law of large numbers, and the central limit theorem, the last one being called so as a way to assert its key role among all the limit theorems in probability theory (see Hernandez and Hernandez, 2003).

8.1   THE WEAK LAW OF LARGE NUMBERS

When the distribution of a random variable X is known, it is usually possible to find its expected value and variance. However, the knowledge of these two quantities do not allow us to find probabilities such as P (|Xc| > ∊) for ∊ > 0. In this regard, the Russian mathematician Chebyschev proved an inequality, appropriately known as Chebyschev’s inequality (compare with exercise 2.48 from Chapter 2), which offers a bound for such probabilities.

Even though in practice it is seldom used, its theoretical importance is unquestionable, as we will see later on.

Chebyschev’s inequality is a particular case of Markov’s inequality (compare with exercise 2.47 from Chapter 2), which we present next.

Lemma 8.1 (Markov’s Inequality) If X is a nonnegative random variable whose expected value exists, then, for all a > 0, we have:

Proof:   Consider ...

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