Given: Let X be a sample from P &#x2208;<!-- ∈ --> <mrow class="MJX-TeXAtom-ORD"> <mi

skynugurq7

skynugurq7

Answered question

2022-07-07

Given: Let X be a sample from P P , δ 0 ( X ) be a decision rule (which may be randomized) in a problem with R k as the action space, and T be a sufficient statistic for P P . For any Borel A R k , define
δ 1 ( T , A ) = E [ δ 0 ( X , A ) | T ]
Let L ( P , a ) be a loss function. Show that
L ( P , a ) d δ 1 ( X , a ) = E [ L ( P , a ) d δ 0 ( X , a ) | T ]
My idea of proving this is to show that this holds for a simple function L and generalize that to non-negative functions L by using the conditional Montone Convergence Theorem. But I can't really show the equality for a simple function L. That is, if we take L = i = 1 n c i 1 A i can I show that the given result indeed holds true?

Answer & Explanation

Kroatujon3

Kroatujon3

Beginner2022-07-08Added 19 answers

You can prove this for simple functions L = i = 1 n c i 1 A i by using linearity of conditional expectation as follows:
i = 1 n c i 1 A i d δ 1 ( X , a ) = i = 1 n c i δ 1 ( X , A i ) by definition
= i = 1 n c i E [ δ 0 ( X , A i ) | T ]
= E [ i = 1 n c i δ 0 ( X , A i ) | T ] by linearity of conditional expectation
= E [ i = 1 n c i 1 A i d δ 0 ( X , a ) | T ]
= E [ L d δ 0 ( X , a ) | T ] as desired.

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