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Impacts of US-China trade friction on stock prices: An empirical study of machinery companies
The address by President Trump on the trade between US and China in May, 2019 had a significant and global influence on manufacturing companies. In this paper, we extracted the stock price decline patterns due to the address by using Singular Value Decomposition Method with the intention of introduc...
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Published in: | International Journal of Applied Science and Engineering 2020-01, Vol.17 (4), p.383-391 |
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container_title | International Journal of Applied Science and Engineering |
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creator | Kenji Yamaguchi Yukari Shirota |
description | The address by President Trump on the trade between US and China in May, 2019 had a significant and global influence on manufacturing companies. In this paper, we extracted the stock price decline patterns due to the address by using Singular Value Decomposition Method with the intention of introducing a new approach to measure patterns of effects of such contingencies which happen once in a while on stock prices. The results are expected to have also meaningfulness for investors as well as analysts. Our analyses include two types. The first analysis focuses on the extraction of patterns among companies which have high intensity of business engagement in China and the second one among counties. In the first analysis we used only Japanese companies’ data because of data availability. As to the second analysis, we used only machinery industry’s data of Germany, Japan and US which compete in the global market and have mature stock markets respectively. The analyses made differences of patterns among businesses such as B-to-B and B-to-C stand out in the first analysis and differences among countries in the second analysis. Those results are expected to inspire further research, especially, exploration of new methodologies in the area of analysis of stock price fluctuations due to economic crises such as global trade or political affairs. |
doi_str_mv | 10.6703/IJASE.202012_17(4).383 |
format | article |
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In this paper, we extracted the stock price decline patterns due to the address by using Singular Value Decomposition Method with the intention of introducing a new approach to measure patterns of effects of such contingencies which happen once in a while on stock prices. The results are expected to have also meaningfulness for investors as well as analysts. Our analyses include two types. The first analysis focuses on the extraction of patterns among companies which have high intensity of business engagement in China and the second one among counties. In the first analysis we used only Japanese companies’ data because of data availability. As to the second analysis, we used only machinery industry’s data of Germany, Japan and US which compete in the global market and have mature stock markets respectively. The analyses made differences of patterns among businesses such as B-to-B and B-to-C stand out in the first analysis and differences among countries in the second analysis. Those results are expected to inspire further research, especially, exploration of new methodologies in the area of analysis of stock price fluctuations due to economic crises such as global trade or political affairs.</description><identifier>ISSN: 1727-2394</identifier><identifier>DOI: 10.6703/IJASE.202012_17(4).383</identifier><language>chi ; eng</language><publisher>台灣: 朝陽科技大學理工學院</publisher><subject>Disastrous impact on stock prices ; Scopus ; Singular value composition ; US-China trade friction</subject><ispartof>International Journal of Applied Science and Engineering, 2020-01, Vol.17 (4), p.383-391</ispartof><lds50>peer_reviewed</lds50><woscitedreferencessubscribed>false</woscitedreferencessubscribed></display><links><openurl>$$Topenurl_article</openurl><openurlfulltext>$$Topenurlfull_article</openurlfulltext><thumbnail>$$Tsyndetics_thumb_exl</thumbnail><link.rule.ids>314,777,781,27905,27906</link.rule.ids></links><search><creatorcontrib>Kenji Yamaguchi</creatorcontrib><creatorcontrib>Yukari Shirota</creatorcontrib><title>Impacts of US-China trade friction on stock prices: An empirical study of machinery companies</title><title>International Journal of Applied Science and Engineering</title><description>The address by President Trump on the trade between US and China in May, 2019 had a significant and global influence on manufacturing companies. 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language | chi ; eng |
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subjects | Disastrous impact on stock prices Scopus Singular value composition US-China trade friction |
title | Impacts of US-China trade friction on stock prices: An empirical study of machinery companies |
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