Efficient Learning for Decomposing and Optimizing Random Networks

In this study, we consider the problem of node ranking in a random network. A Markov chain is defined for the network, and its transition probability matrix is unknown but can be learned by sampling random interactions among nodes. Our objective is to decompose the Markov chain into several ergodic...

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Main Authors: Li, Haidong, Peng, Yijie, Xu, Xiaoyun, Heidergott, Bernd F, Chen, Chun-Hung
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Published: Archīum Ateneo 2022
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Online Access:https://archium.ateneo.edu/gsb-pubs/75
https://doi.org/10.1016/j.fmre.2022.01.018
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Institution: Ateneo De Manila University
id ph-ateneo-arc.gsb-pubs-1074
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spelling ph-ateneo-arc.gsb-pubs-10742023-07-27T02:15:36Z Efficient Learning for Decomposing and Optimizing Random Networks Li, Haidong Peng, Yijie Xu, Xiaoyun Heidergott, Bernd F Chen, Chun-Hung In this study, we consider the problem of node ranking in a random network. A Markov chain is defined for the network, and its transition probability matrix is unknown but can be learned by sampling random interactions among nodes. Our objective is to decompose the Markov chain into several ergodic classes and select the best node in each ergodic class. We propose a dynamic sampling procedure, which gives a probability guarantee on correct decomposition and maximizes a weighted probability of correct selection of the best node in each ergodic class. Numerical experiment results demonstrate the efficiency of the proposed sampling procedure. 2022-01-01T08:00:00Z text https://archium.ateneo.edu/gsb-pubs/75 https://doi.org/10.1016/j.fmre.2022.01.018 Graduate School of Business Publications Archīum Ateneo Bayesian learning Random network Markov chain Dynamic decomposition Ranking and selection Mathematics Physical Sciences and Mathematics Statistics and Probability
institution Ateneo De Manila University
building Ateneo De Manila University Library
continent Asia
country Philippines
Philippines
content_provider Ateneo De Manila University Library
collection archium.Ateneo Institutional Repository
topic Bayesian learning
Random network
Markov chain
Dynamic decomposition
Ranking and selection
Mathematics
Physical Sciences and Mathematics
Statistics and Probability
spellingShingle Bayesian learning
Random network
Markov chain
Dynamic decomposition
Ranking and selection
Mathematics
Physical Sciences and Mathematics
Statistics and Probability
Li, Haidong
Peng, Yijie
Xu, Xiaoyun
Heidergott, Bernd F
Chen, Chun-Hung
Efficient Learning for Decomposing and Optimizing Random Networks
description In this study, we consider the problem of node ranking in a random network. A Markov chain is defined for the network, and its transition probability matrix is unknown but can be learned by sampling random interactions among nodes. Our objective is to decompose the Markov chain into several ergodic classes and select the best node in each ergodic class. We propose a dynamic sampling procedure, which gives a probability guarantee on correct decomposition and maximizes a weighted probability of correct selection of the best node in each ergodic class. Numerical experiment results demonstrate the efficiency of the proposed sampling procedure.
format text
author Li, Haidong
Peng, Yijie
Xu, Xiaoyun
Heidergott, Bernd F
Chen, Chun-Hung
author_facet Li, Haidong
Peng, Yijie
Xu, Xiaoyun
Heidergott, Bernd F
Chen, Chun-Hung
author_sort Li, Haidong
title Efficient Learning for Decomposing and Optimizing Random Networks
title_short Efficient Learning for Decomposing and Optimizing Random Networks
title_full Efficient Learning for Decomposing and Optimizing Random Networks
title_fullStr Efficient Learning for Decomposing and Optimizing Random Networks
title_full_unstemmed Efficient Learning for Decomposing and Optimizing Random Networks
title_sort efficient learning for decomposing and optimizing random networks
publisher Archīum Ateneo
publishDate 2022
url https://archium.ateneo.edu/gsb-pubs/75
https://doi.org/10.1016/j.fmre.2022.01.018
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