情感颜色检测的数据挖掘模型-决策树

M. Lee, Guey-Shya Chen
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引用次数: 1

摘要

情感计算是一种新的发展趋势,其主要目标是探索人类的情感事物。人的情感被引导到行为线索的关键位置,因此当智能系统旨在模拟或预测人的反应时,应将其纳入感知模型。本研究利用数据挖掘模型中的决策树对情感进行分类。本研究将Thayer的情绪模式和色彩理论整合并运用到决策树模型C4.5中,构建了一个创新的情绪检测系统。本文利用4个情绪组的320个数据进行训练和构建决策树,验证该系统的准确性。结果表明,C4.5决策树模型可以有效地对人类反馈颜色的情感进行分类。对于进一步的研究,颜色将不再是人类行为的唯一线索,甚至超过所有来自人类互动的因素。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Data Mining Model-Decision Tree for Detecting Emotions Color
Affective computing is a newly trend the main goal is exploring the human emotion things. The human emotion is leaded into a key position of behavior clue, and hence it should be included within the sensible model when an intelligent system aims to simulate or forecast human responses. This research utilizes decision tree one of data mining model to classify the emotion. This research integrates and manipulates the Thayer's emotion mode and color theory into the decision tree model, C4.5 for an innovative emotion detecting system. This paper uses 320 data in four emotion groups to train and build the decision tree for verifying the accuracy in this system. The result reveals that C4.5 decision tree model can be effective classified the emotion by feedback color from human. For the further research, colors will not the only human behavior clues, even more than all the factors from human interaction.
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