Permutation Entropy as a Measure of Information Gain/Loss in the Different Symbolic Descriptions of Financial Data

Financial markets give a large number of trading opportunities. However, over-complicated systems make it very difficult to be effectively used by decision-makers. Volatility and noise present in the markets evoke a need to simplify the market picture derived for the decision-makers. Symbolic repres...

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Main Authors: Jan Kozak, Krzysztof Kania, Przemysław Juszczuk
Format: Article
Language:English
Published: MDPI AG 2020-03-01
Series:Entropy
Subjects:
Online Access:https://www.mdpi.com/1099-4300/22/3/330
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spelling doaj-d1e7be704212415da1ddf83d667025722020-11-25T02:52:24ZengMDPI AGEntropy1099-43002020-03-0122333010.3390/e22030330e22030330Permutation Entropy as a Measure of Information Gain/Loss in the Different Symbolic Descriptions of Financial DataJan Kozak0Krzysztof Kania1Przemysław Juszczuk2Faculty of Informatics and Communication; Department of Knowledge Engineering, University of Economics, 1 Maja 50, 40-287 Katowice, PolandFaculty of Informatics and Communication; Department of Knowledge Engineering, University of Economics, 1 Maja 50, 40-287 Katowice, PolandFaculty of Informatics and Communication; Department of Knowledge Engineering, University of Economics, 1 Maja 50, 40-287 Katowice, PolandFinancial markets give a large number of trading opportunities. However, over-complicated systems make it very difficult to be effectively used by decision-makers. Volatility and noise present in the markets evoke a need to simplify the market picture derived for the decision-makers. Symbolic representation fits in this concept and greatly reduces data complexity. However, at the same time, some information from the market is lost. Our motivation is to answer the question: What is the impact of introducing different data representation on the overall amount of information derived for the decision-maker? We concentrate on the possibility of using entropy as a measure of the information gain/loss for the financial data, and as a basic form, we assume permutation entropy with later modifications. We investigate different symbolic representations and compare them with classical data representation in terms of entropy. The real-world data covering the time span of 10 years are used in the experiments. The results and the statistical verification show that extending the symbolic description of the time series does not affect the permutation entropy values.https://www.mdpi.com/1099-4300/22/3/330forex marketpermutation entropysymbolic analysissymbolic data
collection DOAJ
language English
format Article
sources DOAJ
author Jan Kozak
Krzysztof Kania
Przemysław Juszczuk
spellingShingle Jan Kozak
Krzysztof Kania
Przemysław Juszczuk
Permutation Entropy as a Measure of Information Gain/Loss in the Different Symbolic Descriptions of Financial Data
Entropy
forex market
permutation entropy
symbolic analysis
symbolic data
author_facet Jan Kozak
Krzysztof Kania
Przemysław Juszczuk
author_sort Jan Kozak
title Permutation Entropy as a Measure of Information Gain/Loss in the Different Symbolic Descriptions of Financial Data
title_short Permutation Entropy as a Measure of Information Gain/Loss in the Different Symbolic Descriptions of Financial Data
title_full Permutation Entropy as a Measure of Information Gain/Loss in the Different Symbolic Descriptions of Financial Data
title_fullStr Permutation Entropy as a Measure of Information Gain/Loss in the Different Symbolic Descriptions of Financial Data
title_full_unstemmed Permutation Entropy as a Measure of Information Gain/Loss in the Different Symbolic Descriptions of Financial Data
title_sort permutation entropy as a measure of information gain/loss in the different symbolic descriptions of financial data
publisher MDPI AG
series Entropy
issn 1099-4300
publishDate 2020-03-01
description Financial markets give a large number of trading opportunities. However, over-complicated systems make it very difficult to be effectively used by decision-makers. Volatility and noise present in the markets evoke a need to simplify the market picture derived for the decision-makers. Symbolic representation fits in this concept and greatly reduces data complexity. However, at the same time, some information from the market is lost. Our motivation is to answer the question: What is the impact of introducing different data representation on the overall amount of information derived for the decision-maker? We concentrate on the possibility of using entropy as a measure of the information gain/loss for the financial data, and as a basic form, we assume permutation entropy with later modifications. We investigate different symbolic representations and compare them with classical data representation in terms of entropy. The real-world data covering the time span of 10 years are used in the experiments. The results and the statistical verification show that extending the symbolic description of the time series does not affect the permutation entropy values.
topic forex market
permutation entropy
symbolic analysis
symbolic data
url https://www.mdpi.com/1099-4300/22/3/330
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AT przemysławjuszczuk permutationentropyasameasureofinformationgainlossinthedifferentsymbolicdescriptionsoffinancialdata
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