SCALABLE HUMAN KNOWLEDGE ABOUT NUMERIC TIME SERIES VARIATION AND ITS ROLE IN IMPROVING FORECASTING RESULTS

N. D. Hieu, N. C. Ho, Phạm Đình Phong, Vũ Như Lân, Phạm Hoàng Hiệp
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Abstract

Instead of handling fuzzy sets associated with linguistic (L-) labels based on the developers’ intuition immediately, the study follows the hedge algebras (HA-) approach to the time series forecasting problems, in which the linguistic time series forecasting model was, for the first time, proposed and examined in 2020. It can handle the declared forecasting L-variable word-set directly and, hence, the terminology linguistic time-series (LTS) is used instead of the fuzzy time-series (FTS). Instead of utilizing a limited number of fuzzy sets, this study views the L-variable under consideration as to the numeric forecasting variable's human linguistic counterpart. Hence, its word-domain becomes potentially infinite to positively utilize the HA-approach formalism for increasing the LTS forecasting result exactness. Because the forecasting model proposed in this study can directly handle L-words, the LTS, constructed from the numeric time series and its L-relationship groups, considered human knowledges of the given time-series variation helpful for the human-machine interface. The study shows that the proposed formalism can more easily handle the LTS forecasting models and increase their performance compared to the FTS forecasting models when the words’ number grows.
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可扩展的人类关于数值时间序列变化的知识及其在改善预测结果中的作用
该研究没有立即根据开发人员的直觉处理与语言(L-)标签相关的模糊集,而是采用套期代数(HA-)方法处理时间序列预测问题,其中语言时间序列预测模型于2020年首次提出并进行了检验。它可以直接处理声明的l变量预测词集,因此使用术语语言时间序列(LTS)代替模糊时间序列(FTS)。本研究没有使用有限数量的模糊集,而是将l变量视为数字预测变量的人类语言对应物。因此,它的词域变得潜在无限,可以积极利用ha方法的形式主义来提高LTS预测结果的准确性。由于本研究提出的预测模型可以直接处理L-words,因此由数字时间序列及其l -关系组构建的LTS认为人类对给定时间序列变化的了解有助于人机界面。研究表明,与FTS预测模型相比,当单词数量增加时,所提出的形式可以更容易地处理LTS预测模型,并提高其性能。
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