Development of Stock Networks Using Part Mutual Information and Australian Stock Market Data

Complex network is a powerful tool to discover important information from various types of big data. Although substantial studies have been conducted for the development of stock relation networks, correlation coefficient is dominantly used to measure the relationship between stock pairs. Informatio...

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Main Authors: Yan Yan, Boyao Wu, Tianhai Tian, Hu Zhang
Format: Article
Language:English
Published: MDPI AG 2020-07-01
Series:Entropy
Subjects:
Online Access:https://www.mdpi.com/1099-4300/22/7/773
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spelling doaj-7b026b2f807a48a5ad87436a3e46f4e52020-11-25T03:30:32ZengMDPI AGEntropy1099-43002020-07-012277377310.3390/e22070773Development of Stock Networks Using Part Mutual Information and Australian Stock Market DataYan Yan0Boyao Wu1Tianhai Tian2Hu Zhang3School of Mathematics and Physics, Wuhan Institute of Technology, Wuhan 430205, ChinaSchool of Mathematics, Monash University, Melbourne, VIC 3800, AustraliaSchool of Mathematics, Monash University, Melbourne, VIC 3800, AustraliaSchool of Statistics and Mathematics, Zhongnan University of Economics and Law, Wuhan 430073, ChinaComplex network is a powerful tool to discover important information from various types of big data. Although substantial studies have been conducted for the development of stock relation networks, correlation coefficient is dominantly used to measure the relationship between stock pairs. Information theory is much less discussed for this important topic, though mutual information is able to measure nonlinear pairwise relationship. In this work we propose to use part mutual information for developing stock networks. The path-consistency algorithm is used to filter out redundant relationships. Using the Australian stock market data, we develop four stock relation networks using different orders of part mutual information. Compared with the widely used planar maximally filtered graph (PMFG), we can generate networks with cliques of large size. In addition, the large cliques show consistency with the structure of industrial sectors. We also analyze the connectivity and degree distributions of the generated networks. Analysis results suggest that the proposed method is an effective approach to develop stock relation networks using information theory.https://www.mdpi.com/1099-4300/22/7/773part mutual informationstock relation networkpath-consistencycorrelation coefficientcliquedegree
collection DOAJ
language English
format Article
sources DOAJ
author Yan Yan
Boyao Wu
Tianhai Tian
Hu Zhang
spellingShingle Yan Yan
Boyao Wu
Tianhai Tian
Hu Zhang
Development of Stock Networks Using Part Mutual Information and Australian Stock Market Data
Entropy
part mutual information
stock relation network
path-consistency
correlation coefficient
clique
degree
author_facet Yan Yan
Boyao Wu
Tianhai Tian
Hu Zhang
author_sort Yan Yan
title Development of Stock Networks Using Part Mutual Information and Australian Stock Market Data
title_short Development of Stock Networks Using Part Mutual Information and Australian Stock Market Data
title_full Development of Stock Networks Using Part Mutual Information and Australian Stock Market Data
title_fullStr Development of Stock Networks Using Part Mutual Information and Australian Stock Market Data
title_full_unstemmed Development of Stock Networks Using Part Mutual Information and Australian Stock Market Data
title_sort development of stock networks using part mutual information and australian stock market data
publisher MDPI AG
series Entropy
issn 1099-4300
publishDate 2020-07-01
description Complex network is a powerful tool to discover important information from various types of big data. Although substantial studies have been conducted for the development of stock relation networks, correlation coefficient is dominantly used to measure the relationship between stock pairs. Information theory is much less discussed for this important topic, though mutual information is able to measure nonlinear pairwise relationship. In this work we propose to use part mutual information for developing stock networks. The path-consistency algorithm is used to filter out redundant relationships. Using the Australian stock market data, we develop four stock relation networks using different orders of part mutual information. Compared with the widely used planar maximally filtered graph (PMFG), we can generate networks with cliques of large size. In addition, the large cliques show consistency with the structure of industrial sectors. We also analyze the connectivity and degree distributions of the generated networks. Analysis results suggest that the proposed method is an effective approach to develop stock relation networks using information theory.
topic part mutual information
stock relation network
path-consistency
correlation coefficient
clique
degree
url https://www.mdpi.com/1099-4300/22/7/773
work_keys_str_mv AT yanyan developmentofstocknetworksusingpartmutualinformationandaustralianstockmarketdata
AT boyaowu developmentofstocknetworksusingpartmutualinformationandaustralianstockmarketdata
AT tianhaitian developmentofstocknetworksusingpartmutualinformationandaustralianstockmarketdata
AT huzhang developmentofstocknetworksusingpartmutualinformationandaustralianstockmarketdata
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