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Time Series Trend Detection and Forecasting Using Complex Network Topology Analysis

机译:使用复杂网络拓扑分析的时间序列趋势检测和预测

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Extracting knowledge from time series analysis has been growing in importance and complexity over the last decade as the amount of stored data has increased exponentially. Considering this scenario, new data mining techniques have continuously developed to deal with such a situation. In this paper, we propose to study time series based on its topological characteristics, observed on complex networks generated from the time series data. Specifically, the aim of the proposed model is to create a trend detection algorithm for stochastic time series based on community detection and network walk observations. It is expected that the proposed model presents some advantages over traditional time series analysis, such as dimensionality reduction, use of hidden correlation on data and reinforcement learning as more data is added to the data set. Experimental results on the Bovespa index (Brazilian stock market) trend prediction shows that the proposed technique is promising.
机译:从时间序列分析中提取知识在过去十年中的重要性和复杂性在过去十年中越来越大,因为所存储的数据量呈指数增加。考虑到这种情况,新的数据挖掘技术不断发展以处理这种情况。在本文中,我们提出基于其拓扑特性研究时间序列,从时间序列数据生成的复杂网络上观察到。具体而言,所提出的模型的目的是基于社区检测和网络步行观察创建用于随机时间序列的趋势检测算法。预期,该模型与传统的时间序列分析呈现一些优点,例如维度降低,使用数据和加强学习的隐藏相关性以及更多数据被添加到数据集中。 Bovespa指数(巴西股市)趋势预测的实验结果表明,提出的技术是有前途的。

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