Optimal Belief Approximation

被引:12
|
作者
Leike, Reimar H. [1 ,2 ]
Ensslin, Torsten A. [1 ,2 ]
机构
[1] Max Planck Inst Astrophys, Karl Schwarzschildstr 1, D-85748 Garching, Germany
[2] Ludwig Maximilians Univ Munchen, Geschwister Scholl Pl 1, D-80539 Munich, Germany
来源
ENTROPY | 2017年 / 19卷 / 08期
关键词
information theory; Bayesian inference; loss function; axiomatic derivation; machine learning; RELATIVE ENTROPY;
D O I
10.3390/e19080402
中图分类号
O4 [物理学];
学科分类号
0702 ;
摘要
In Bayesian statistics probability distributions express beliefs. However, for many problems the beliefs cannot be computed analytically and approximations of beliefs are needed. We seek a loss function that quantifies how "embarrassing" it is to communicate a given approximation. We reproduce and discuss an old proof showing that there is only one ranking under the requirements that (1) the best ranked approximation is the non-approximated belief and (2) that the ranking judges approximations only by their predictions for actual outcomes. The loss function that is obtained in the derivation is equal to the Kullback-Leibler divergence when normalized. This loss function is frequently used in the literature. However, there seems to be confusion about the correct order in which its functional arguments-the approximated and non-approximated beliefs-should be used. The correct order ensures that the recipient of a communication is only deprived of the minimal amount of information. We hope that the elementary derivation settles the apparent confusion. For example when approximating beliefs with Gaussian distributions the optimal approximation is given by moment matching. This is in contrast to many suggested computational schemes.
引用
收藏
页数:9
相关论文
共 50 条
  • [21] Optimal contracting with asymmetric belief and complementarity
    Chang, Jia Jia
    Hu, Zhi Jun
    Liu, Changxiu
    KYBERNETES, 2024, 53 (04) : 1331 - 1353
  • [22] Lp consonant approximation of belief functions in the mass space
    Cuzzolin, Fabio
    ISIPTA '11 - PROCEEDINGS OF THE SEVENTH INTERNATIONAL SYMPOSIUM ON IMPRECISE PROBABILITY: THEORIES AND APPLICATIONS, 2011, : 149 - 158
  • [23] Resource bounded and anytime approximation of belief function computations
    Haenni, R
    Lehmann, N
    INTERNATIONAL JOURNAL OF APPROXIMATE REASONING, 2002, 31 (1-2) : 103 - 154
  • [24] BELIEF REVISION AIMING AT TRUTH APPROXIMATION Introduction and Overview
    Kuipers, Theo
    Schurz, Gerhard
    ERKENNTNIS, 2011, 75 (02) : 151 - 163
  • [25] A Note on Belief Structures and S-approximation Spaces
    Shakiba, Ali
    Goharshady, Amir Kafshdar
    Hooshmandasl, Mohammad Reza
    Meybodi, Mohsen Alambardar
    IRANIAN JOURNAL OF MATHEMATICAL SCIENCES AND INFORMATICS, 2020, 15 (02): : 117 - 128
  • [26] On the inference and approximation properties of belief rule based systems
    Chen, Yu-Wang
    Yang, Jian-Bo
    Xu, Dong-Ling
    Yang, Shan-Lin
    INFORMATION SCIENCES, 2013, 234 : 121 - 135
  • [27] The Relationship Between Optimal Hankel Approximation And Truncation Approximation
    Zhao, Xiaodong
    Wang, Zhuzhen
    Wang, Haiyan
    2009 INTERNATIONAL SYMPOSIUM ON COMPUTER NETWORK AND MULTIMEDIA TECHNOLOGY (CNMT 2009), VOLUMES 1 AND 2, 2009, : 505 - +
  • [28] Optimal learning with a local parametric belief model
    Bolong Cheng
    Arta Jamshidi
    Warren B. Powell
    Journal of Global Optimization, 2015, 63 : 401 - 425
  • [29] Optimal insurance with belief heterogeneity and incentive compatibility
    Chi, Yichun
    Zhuang, Sheng Chao
    INSURANCE MATHEMATICS & ECONOMICS, 2020, 92 : 104 - 114
  • [30] Learning, belief manipulation and optimal relationship termination
    Gao, Hong
    Xu, Haibo
    ECONOMICS LETTERS, 2020, 190