Detecting Community Structure in Financial Markets Using the Bat Optimization Algorithm

K. Aggarwal, Anuja Arora
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引用次数: 1

Abstract

A lucid representation of the hidden structure of real-world application has attracted complex network research communities and triggered a vast number of solutions in order to resolve complex network issues. In the same direction, initially, this paper proposes a methodology to act on the financial dataset and construct a stock correlation network of four stock indexes based on the closing stock price. The significance of this research work is to form an effective stock community based on their complex price pattern dependencies (i.e., simultaneous fluctuations in stock prices of companies in a time series data). This paper proposes a community detection approach for stock correlation complex networks using the BAT optimization algorithm aiming to achieve high modularity and better-correlated communities. Theoretical analysis and empirical modularity performance measure results have shown that the usage of BAT algorithm for community detection proves to transcend performance in comparison to standard network community detection algorithms – greedy and label propagation.
利用Bat优化算法检测金融市场社区结构
为了解决复杂的网络问题,对现实世界应用中隐藏结构的清晰表现吸引了复杂网络研究界,并引发了大量的解决方案。在相同的方向上,本文首先提出了一种基于金融数据集的方法,基于收盘价构建四个股票指数的股票相关网络。本研究工作的意义在于,基于它们复杂的价格模式依赖关系(即在一个时间序列数据中,公司的股价同时波动),形成一个有效的股票社区。本文提出了一种基于BAT优化算法的股票相关复杂网络社区检测方法,以实现高模块化和更好的社区关联。理论分析和实证模块化性能测量结果表明,与标准的网络社区检测算法(贪婪和标签传播)相比,使用BAT算法进行社区检测证明具有超越性能的优点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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