Modeling the mood state on thermal sensation with a data mining algorithm and testing the accuracy of mood state correction factor

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS ACS Applied Bio Materials Pub Date : 2024-09-25 DOI:10.1016/j.newideapsych.2024.101124
Fatma Yerlikaya-Özkurt , Mehmet Furkan Özbey , Cihan Turhan
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Abstract

Psychology is proven as an influencing factor on thermal sensation. On the other hand, mood state is one of the significant parameters in psychology field. To this aim, in the literature, mood state correction factor on thermal sensation (Turhan and Özbey coefficients) is derived utilizing with data-driven black-box model. However, novel models which present analytical form of the mood state correction factor should be derived based on the several descriptive variables on thermal sensation. Moreover, the result of this factor should also be checked with analytical model results. Therefore, this study investigates the modelling of mood state correction factor with a data mining algorithm, called Multivariate Adaptive Regression Splines (MARS). Additionally, the mood state is also taken as a thermal sensation parameter besides environmental parameters in this algorithm. The same data, which are collected from a university study hall in a temperate climate zone, are used and the model results are compared with the thermal sensation results based on mood state correction factor which is driven via black-box model. The results show that coefficient of correlation “r” between the MARS and black-box model is found as 0.9426 and 0.9420 for training and testing. Hence, the mood state is also modelled via a data mining algorithm with a high accuracy, besides the black-box model.
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利用数据挖掘算法建立情绪状态对热感觉的影响模型,并测试情绪状态修正系数的准确性
事实证明,心理是热感觉的一个影响因素。另一方面,情绪状态是心理学领域的重要参数之一。为此,文献中利用数据驱动的黑箱模型推导出了热感觉的情绪状态修正系数(Turhan 和 Özbey 系数)。然而,应根据热感觉的几个描述性变量,推导出呈现情绪状态修正系数分析形式的新模型。此外,还应将该系数的结果与分析模型的结果进行核对。因此,本研究采用一种名为 "多变量自适应回归样条曲线(MARS)"的数据挖掘算法来研究情绪状态校正因子的建模问题。此外,在该算法中,除环境参数外,情绪状态也被视为热感觉参数。我们使用了从温带气候区一所大学自习室收集的相同数据,并将模型结果与基于情绪状态修正系数的热感结果进行了比较,后者是通过黑盒模型驱动的。结果显示,MARS 与黑盒模型之间的相关系数 "r "在训练和测试中分别为 0.9426 和 0.9420。因此,除黑盒模型外,通过数据挖掘算法建立情绪状态模型也具有很高的准确性。
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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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