局部趋势模型用于股票市场行业指数的走势分析

IF 0.3 Q4 BUSINESS, FINANCE
H. Widiputra
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引用次数: 2

摘要

以往的研究发现,时间序列分析领域的主要挑战之一是缺乏揭示观测动态系统隐藏剖面的能力。因此,本研究采用一种自适应聚类方法,即局部趋势模型,从多个时间序列数据的轨迹中提取和分组动态重复趋势,以揭示其潜在的运动特征。因此,在本研究中,提取了2016年印度尼西亚证券交易所市场部门指数之间运动的局部动态概况,分析并利用其作为案例研究来预测其未来价值。实验结果证实,所采用的方法能够对印度尼西亚行业指数进行运动分析,并有助于更好地理解其必要的基本行为。此外,该研究还验证了在时间序列数据集合中更好地理解运动概况的能力将有利于提高预测精度的命题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Localized trend model for stock market sectoral indexes movement profiling
Previous studies have found that one of the main challenges in the area of time-series analysis is the lack of ability to reveal the hidden profiles of observed dynamic systems. Therefore, this study applies an adaptive clustering method named the Localized Trend Model to extract and group dynamic recurring trends from trajectories of multiple time-series data to expose their underlying profiles of movement. Consequently, in this research localized dynamic profiles of movement between sectoral indexes from the Indonesia stock exchange market in the year of 2016 are extracted, analyzed and utilized to predict their future values as a case study. Results of conducted experiments confirmed that the employed method is capable to perform movement profiling for the Indonesia sectoral indexes and be of help to better understand their imperative basic behavior. Furthermore, the study has also verified the proposition that the ability to better understand profiles of movement in a collection of time-series data would benefit to increase prediction accuracy.
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来源期刊
Algorithmic Finance
Algorithmic Finance BUSINESS, FINANCE-
CiteScore
0.40
自引率
0.00%
发文量
6
期刊介绍: Algorithmic Finance is both a nascent field of study and a new high-quality academic research journal that seeks to bridge computer science and finance. It covers such applications as: High frequency and algorithmic trading Statistical arbitrage strategies Momentum and other algorithmic portfolio management Machine learning and computational financial intelligence Agent-based finance Complexity and market efficiency Algorithmic analysis of derivatives valuation Behavioral finance and investor heuristics and algorithms Applications of quantum computation to finance News analytics and automated textual analysis.
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