Density Functions on Steroids

We have seen that a random variable X is said to be (absolutely) continuous if there exists a continuous, non-negative, integrable function f_X such that for any Borel-measurable K,

\displaystyle \mathbb P_X(K) = \int_K f_X\, \mathrm d\lambda.

In this case, \mathbb P_X \ll \lambda in the sense that for any Borel-measurable L,

\lambda(L) = 0 \quad \Rightarrow \quad \mathbb P_X(L) = 0.

It turns out that the reverse is true.

Theorem 1 (Radon-Nikodým Theorem). Let (\Omega, \mathcal F) be a measurable space. If \mu, \nu are \sigma-finite measures on (\Omega, \mathcal F) such that \nu \ll \mu, then there exists a measurable function f : \Omega \to [0, \infty] such that

\displaystyle \nu(K) = \int_K f\, \mathrm d\mu.

Furthermore, f is unique \mu-a.e., called the Radon-Nikodým derivative, denoted \displaystyle \frac{\mathrm d \nu}{\mathrm d\mu}.

In particular, for any measure \mathbb P_X on (\mathbb R^n, \frak{B}(\mathbb R^n), \lambda), where \lambda denotes the n-dimensional Lebesgue measure,

\displaystyle f_X := \frac{\mathrm d\mathbb P_X}{\mathrm d\lambda} \quad \iff \quad \mathrm d\mathbb P_X \equiv f_X\, \mathrm d\lambda

is called the probability density function of X, where the right-hand side follows a legitimate abuse of notation.

Our goal in this post is to prove the Radon-Nikodým theorem. To achieve that goal, we will need to introduce the notion of a signed measure, and a lemma known as Hahn’s decomposition theorem.

Let (\Omega, \mathcal F) be a measurable space.

Definition 1. The map \mu : \mathcal F \to \mathbb R (excluding infinities) is called a signed measure if \mu(\emptyset) = 0 and \mu is countably additive.

Theorem 2 (Hahn Decomposition Theorem). If \mu is a signed measure on (\Omega, \mathcal F), then there exist disjoint measurable sets P, N \in \mathcal F such that

\displaystyle \mu( \cdot \cap P) \in [0,\infty),\quad \mu( \cdot \cap N) \in (-\infty, 0],\quad P \sqcup N = \Omega.

In this case, we call the set P a positive set, denoted P \geq 0, and N a negative set, denoted N \leq 0. A set M is null if it is positive and negative, i.e. \mu( \cdot \cap M) \in \{0\}.

Proof of Theorem 2. We first check that \alpha := \sup \{\mu(K) : K \geq 0\} < \infty. If not, then for any n \in \mathbb N^+, there exists K_n \in \mathcal F with K_n \geq 0 such that \mu(K_n) \geq n. Then K := \bigcup_{n=1}^\infty K_n has measure \mu(K) \geq n for any n, leading to \mu(K) = \infty, a contradiction.

Therefore, for any n \in \mathbb N^+, there exists P_n \geq 0 such that \alpha - 1/n < \mu(P_n) \leq \alpha. It follows by bookkeeping that P := \bigcup_{n=1}^\infty P_n is positive. We claim that N:= \Omega \backslash P is negative.

Suppose otherwise. Then there exists K \in \mathcal F such that \mu(K \cap N) > 0. Assume K \subseteq N so that \mu(K) > 0. If K is positive, then so is P \cup K, thus \mu(P \cup K) = \mu(P) + \mu(K) > \alpha, a contradiction. Therefore, there exists K_1 \subseteq K such that \mu(K_1) = \mu(K_1 \cap K) < 0. Furthermore, \mu(K \backslash K_1) = \mu(K) - \mu(K_1) > 0.

Define n_1 := \min \{k \in \mathbb N : \mu(K_1) < -1/k\}, which exists by the Archimedean property of \mathbb R. Repeating the argument inductively on the set K \backslash \bigcup_{j=1}^{i-1} K_j, we obtain K \supseteq K_1 \supseteq K_2 \supseteq \dots such that K_i \subseteq K \backslash \bigcup_{j=1}^{i-1} K_j and \mu(K_i) < -1/{n_i}, where n_i is the smallest possible positive integer. Define L := K \backslash \bigsqcup_{i=1}^\infty K_i, which has positive finite measure. Since \mu is countably additive,

\displaystyle \mu(K) = \mu(L) + \sum_{i=1}^\infty \mu(K_i).

Hence, \mu(K_i) \to 0 \iff 1/n_i \to 0 as i \to \infty.

If we can show that L \geq 0, then \mu(L \cup P) > \alpha, yielding the desired contradiction. To that end, suppose for a contradiction that there exists M \subseteq L such that \mu(M) = \mu(M \cap L) < 0. Then \mu(M) < -1/(n_i - 1) for some n_i, contradicting the construction of K_i, as required.

Now we prove the Radon-Nikodým theorem.

Proof of Theorem 1. We first assume that \mu, \nu are finite. For any n, k, define the signed measure \lambda_{n,k} := \nu - \frac{k}{2^n} \cdot \mu : \mathcal F \to \mathbb R. By the Hahn decomposition theorem, there exist disjoint positive and negative sets P_{n,k}, N_{n,k} with respect to \lambda_{n,k} such that P_{n,k} \sqcup N_{n,k} = \Omega.

Since k\cdot 2^{-n} \geq l \cdot 2^{-m} implies P_{n,k} \subseteq P_{m,l}, for any n, ( P_{n,k} ) is decreasing in k. Define the set P_n := \bigcap_{k=1}^\infty P_{n,k}, which is positive with respect to all \lambda_{n,k}. Since this set is positive with respect to \lambda_{n,k},

\displaystyle \lambda_{n,k}(P_{n,k}) \geq 0 \quad \Rightarrow \quad \mu(P_n) \leq \mu(P_{n,k}) \leq \frac{2^n}{k} \cdot \nu(P_{n,k}) \leq \frac{2^n}{k} \cdot \nu(\Omega).

Taking k \to \infty, we obtain \mu(P_n) = 0 for any n. Define the simple functions

\begin{aligned} f_{n}^- &:= \sum_{k=1}^\infty \frac{k}{2^n} \cdot \mathbb I_{P_{n,k} \backslash P_{n,k+1}} + \infty \cdot \mathbb I_{P_n}, \\ f_{n}^+ &:= \sum_{k=1}^\infty \frac{k+1}{2^n} \cdot \mathbb I_{P_{n,k} \backslash P_{n,k+1}} + \infty \cdot \mathbb I_{P_n}. \end{aligned}

Defining M_{n,k} := M \cap P_{n,k} \backslash P_{n,k+1},

\displaystyle \lambda_{n,k}(M_{n,k}) \geq 0 \quad \Rightarrow \quad \frac{k}{2^n} \cdot \mu(M_{n,k}) \leq \nu(M_{n,k}).

On the other hand, M_{n,k} \subseteq \Omega \backslash P_{n, k+1} = N_{n,k+1}, so that

\displaystyle \lambda_{n, k+1}(M_{n,k}) \leq 0 \quad \Rightarrow \quad \nu(M_{n,k}) \leq \frac{k+1}{2^n} \cdot \mu(M_{n,k}).

Combining both estimates,

\displaystyle \frac{k}{2^n} \cdot \mu(M_{n,k}) \leq \nu(M_{n,k}) \leq \frac{k+1}{2^n} \cdot \mu(M_{n,k}).

Summing over k, since M = \bigsqcup_{k=1}^\infty M_{n,k} \sqcup ( M \cap  P_n),

\displaystyle \int_{M} f_n^-\, \mathrm d\mu \leq \nu(M \backslash P_n) \leq \int_{M} f_n^+\, \mathrm d\mu .

Since \mu(P_n) = 0 implies \nu(P_n) = 0,

\displaystyle \int_{M} f_n^-\, \mathrm d\mu \leq \nu(M) \leq \int_{M} f_n^+\, \mathrm d\mu .

Therefore, ( f_n^- ) is monotonically non-decreasing in n, and so converges to some f^- := \limsup_{n \to \infty} f_n^- by the monotone convergence theorem, and

\begin{aligned} \int_M f^-\, \mathrm d\mu &= \lim_{n \to \infty} \int_M f_n^-\, \mathrm d\mu \leq \nu(M) \leq \int_M f^+\, \mathrm d\mu = \int_M f^-\, \mathrm d\mu + \frac {\mu(\Omega)}{2^n} . \end{aligned}

Taking n \to \infty, \displaystyle \nu(M) = \int_M f^-\, \mathrm d\mu, so we set f := f^-, as required.

Now suppose that \mu, \nu are \sigma-finite. Write \Omega = \bigsqcup_{i=1}^\infty K_i with each \mu(K_i) < \infty. For each i, obtain a non-negative measurable function f_i such that

\displaystyle \nu(M \cap K_i) = \int_{M \cap K_i} f_i\, \mathrm d\mu ,\quad M \in \mathcal F.

Define the non-negative measurable function f := \sum_{i=1}^\infty f_i \cdot \mathbb I_{K_i}. Then for any M \in \mathcal F,

\displaystyle \nu(M) = \sum_{i=1}^\infty \nu (M \cap K_i) = \sum_{i=1}^\infty \int_{M} f_i \cdot \mathbb I_{K_i}\, \mathrm d\mu = \int_{M} \sum_{i=1}^\infty f_i \cdot \mathbb I_{K_i}\, \mathrm d\mu = \int_{M} f\, \mathrm d\mu.

Finally, \mu-a.e. uniqueness holds since

\displaystyle \left( \int_{M} f\, \mathrm d\mu = 0,\ M \in \mathcal F \right) \quad \Rightarrow \quad f = 0\ \mu\text{-a.e.}.

We can now finally turn our attention to adding two continuous random variables X, Y properly, since \mathbb P_{X,Y} \ll \lambda so that by the Radon-Nikodým theorem, there exists a density function f_{X,Y} for the joint distribution \mathbb P_{X,Y}.

—Joel Kindiak, 23 Jul 25, 0113H

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