Explanatory Change Detection in Financial Markets by Graph-Based Entropy and Inter-Domain Linkage
Abstract
:1. Introduction
2. Related Research
2.1. Graph-Based Entropy
2.2. Inter-Domain Linkage
3. Experiment
3.1. Purpose and Hypothesis
3.2. Data
3.3. Daily Correlation Graph
3.4. Domain
3.5. Change-Detection Indicators
4. Results
4.1. Changes in Daily Correlation Graphs
4.2. Change Detection Method
5. Discussion
5.1. Changes in Daily Correlation Graphs
5.2. Change Detection
5.3. Change Explanation
6. Conclusions
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
Appendix A
Data (Nodes of Graphs) | Domain Number |
---|---|
TOPIX-17 Foods | 1 |
TOPIX-17 Construction and Materials | 1 |
TOPIX-17 Steel and Nonferrous Metals | 1 |
TOPIX-17 Energy Resources | 1 |
TOPIX-17 Banks | 1 |
TOPIX-17 Materials and Chemicals | 1 |
TOPIX-17 Transportation and Logistics | 1 |
TOPIX-17 Automobiles and Transportation Equipment | 1 |
TOPIX-17 Machinery | 1 |
TOPIX-17 Electric Appliances and Precision Instruments | 1 |
TOPIX-17 Electric Power and Gas | 1 |
TOPIX-17 Financials (EX Banks) | 1 |
TOPIX-17 Retail Trade | 1 |
TOPIX-17 Commercial and Wholesale Trade | 1 |
TOPIX-17 Pharmaceutical | 1 |
TOPIX-17 IT and Services, Others | 1 |
TOPIX-17 Real Estate | 2 |
Japanese Government 2-Year Bond Yield | 2 |
Japanese Government 5-Year Bond Yield | 2 |
Japanese Government 7-Year Bond Yield | 2 |
Japanese Government 10-Year Bond Yield | 2 |
Japanese Government 20-Year Bond Yield | 2 |
Japanese Government 30-Year Bond Yield | 2 |
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Nishikawa, Y.; Yoshino, T.; Sugie, T.; Nakata, Y.; Itou, K.; Ohsawa, Y. Explanatory Change Detection in Financial Markets by Graph-Based Entropy and Inter-Domain Linkage. Entropy 2022, 24, 1726. https://doi.org/10.3390/e24121726
Nishikawa Y, Yoshino T, Sugie T, Nakata Y, Itou K, Ohsawa Y. Explanatory Change Detection in Financial Markets by Graph-Based Entropy and Inter-Domain Linkage. Entropy. 2022; 24(12):1726. https://doi.org/10.3390/e24121726
Chicago/Turabian StyleNishikawa, Yosuke, Takaaki Yoshino, Toshiaki Sugie, Yoshiyuki Nakata, Kakeru Itou, and Yukio Ohsawa. 2022. "Explanatory Change Detection in Financial Markets by Graph-Based Entropy and Inter-Domain Linkage" Entropy 24, no. 12: 1726. https://doi.org/10.3390/e24121726
APA StyleNishikawa, Y., Yoshino, T., Sugie, T., Nakata, Y., Itou, K., & Ohsawa, Y. (2022). Explanatory Change Detection in Financial Markets by Graph-Based Entropy and Inter-Domain Linkage. Entropy, 24(12), 1726. https://doi.org/10.3390/e24121726