A Tutorial on Fuzzy Time Series Forecasting Models: Recent Advances and Challenges

P. O. Lucas, Omid Orang, Petrônio C. L. Silva, E. M. Mendes, F. Guimarães
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引用次数: 3

Abstract

Abstract: Time series forecasting is a powerful tool in planning and decision making, from traditional statistical models to soft computing and artificial intelligence approaches several methods have been developed to generate increasingly accurate forecasts. Fuzzy Time Series (FTS) methods have been introduced in the early 1990’s to handle data uncertainty and to undercome the statistical assumptions of linearity. Many studies have been reporting their good accuracy, simplicity, potential for interpretability and reduced computational complexity. This paper presents a tutorial for FTS methods. First, a review of the relevant literature is made, offering a foundation on the main concepts and FTS-based models for different time series and different types of forecasts. Then, the current challenges and possible solutions, are discussed alongside a timeline of the research developed in this area by the authors that aims at filling some of these gaps. Finally, a tutorial on the pyFTS library is presented. PyFTS is an open and free library coded in Python programming language that was developed by the MINDS Lab (Laboratory of Machine Intelligence and Data Science) and, also provides a set of transformation functions for pre-processing time series and a set of metrics and databases for benchmarking, in addition to implementing several FTS models in the literature.
模糊时间序列预测模型教程:最新进展和挑战
摘要:时间序列预测是规划和决策的有力工具,从传统的统计模型到软计算和人工智能方法,各种预测方法得到了发展,以产生越来越准确的预测。模糊时间序列(FTS)方法在20世纪90年代初被引入,用于处理数据的不确定性和进行线性的统计假设。许多研究已经报告了它们良好的准确性,简单性,可解释性和降低计算复杂性的潜力。本文介绍了FTS方法的教程。首先,对相关文献进行了回顾,为不同时间序列和不同类型预测的主要概念和基于fs的模型提供了基础。然后,讨论当前的挑战和可能的解决方案,以及作者在该领域开发的研究时间表,旨在填补这些空白。最后,介绍了pyFTS库的教程。PyFTS是一个用Python编程语言编写的开放免费库,由MINDS实验室(机器智能和数据科学实验室)开发,除了实现文献中的几个FTS模型外,还提供了一组用于预处理时间序列的转换函数和一组用于基准测试的指标和数据库。
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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