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Main Authors: Li, Zhefan, Fan, Pingyi
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2405.16753
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author Li, Zhefan
Fan, Pingyi
author_facet Li, Zhefan
Fan, Pingyi
contents As the rapidly developments of artificial intelligence and machine learning, behavior tree design in multiagent system or AI game become more important. The behavior tree design problem is highly related to the source coding in information theory. "Twenty Questions" problem is a typical example for the behavior tree design, usually used to explain the source coding application in information theory and can be solved by Huffman coding. In some realistic scenarios, there are some constraints on the asked questions. However, for general question set, finding the minimum expected querying length is an open problem, belongs to NP-hard. Recently, a new coding scheme has been proposed to provide a near optimal solution for binary cases with some constraints, named greedy binary separation coding (GBSC). In this work, we shall generalize it to D-ary cases and propose maximum information gain coding (MIGC) approach to solve the multi-answer decision constrained querying problem. The optimality of the proposed MIGC is discussed in theory. Later on, we also apply MIGC to discuss three practical scenarios and showcase that MIGC has better performance than GBSC and Shannon Coding in terms of bits persymbol.
format Preprint
id arxiv_https___arxiv_org_abs_2405_16753
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Multi-answer Constrained Optimal Querying: Maximum Information Gain Coding
Li, Zhefan
Fan, Pingyi
Information Theory
As the rapidly developments of artificial intelligence and machine learning, behavior tree design in multiagent system or AI game become more important. The behavior tree design problem is highly related to the source coding in information theory. "Twenty Questions" problem is a typical example for the behavior tree design, usually used to explain the source coding application in information theory and can be solved by Huffman coding. In some realistic scenarios, there are some constraints on the asked questions. However, for general question set, finding the minimum expected querying length is an open problem, belongs to NP-hard. Recently, a new coding scheme has been proposed to provide a near optimal solution for binary cases with some constraints, named greedy binary separation coding (GBSC). In this work, we shall generalize it to D-ary cases and propose maximum information gain coding (MIGC) approach to solve the multi-answer decision constrained querying problem. The optimality of the proposed MIGC is discussed in theory. Later on, we also apply MIGC to discuss three practical scenarios and showcase that MIGC has better performance than GBSC and Shannon Coding in terms of bits persymbol.
title Multi-answer Constrained Optimal Querying: Maximum Information Gain Coding
topic Information Theory
url https://arxiv.org/abs/2405.16753