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Partially Observable Markov Decision Process Modelling for Assessing Hierarchies
Date Issued
2020-11-20
Date Available
2024-05-09T16:13:04Z
Abstract
Hierarchical clustering has been shown to be valuable in many scenarios. Despite its usefulness to many situations, there is no agreed methodology on how to properly evaluate the hierarchies produced from di erent techniques, particularly in the case where groundtruth labels are unavailable. This motivates us to propose a framework for assessing the quality of hierarchical clustering allocations which covers the case of no ground-truth information. This measurement is useful, e.g., to assess the hierarchical structures used by online retailer websites to display their product catalogues. Our framework is one of the few attempts for the hierarchy evaluation from a decision theoretic perspective. We model the process as a bot searching stochastically for items in the hierarchy and establish a measure representing the degree to which the hierarchy supports this search. We employ Partially Observable Markov Decision Processes (POMDP) to model the uncertainty, the decision making, and the cognitive return for searchers in such a scenario.
Sponsorship
Science Foundation Ireland
Other Sponsorship
Insight Research Centre
Type of Material
Conference Publication
Publisher
ML Research Press
Copyright (Published Version)
2020 the Authors
Language
English
Status of Item
Peer reviewed
Journal
Pan, S.J. and Sugiyama, M. (eds.) Proceedings of Machine Learning Research Volume 129: Asian Conference on Machine Learning, 18-20 November 2020, Bangkok, Thailand
Conference Details
The 12th Asian Conference on Machine Learning (ACML 2020), Bangkok, Thailand, 18-20 November 2020
This item is made available under a Creative Commons License
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Name
1908.07031v7.pdf
Size
644.58 KB
Format
Adobe PDF
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