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A fuzzy computational model of emotion for cloud based sentiment analysis

机译:基于云的情感分析的模糊计算模型

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AbstractThis paper presents a novel emotion modeling methodology for incorporating human emotion into intelligent computer systems. The proposed approach includes a method to elicit emotion information from users, a new representation of emotion (AV-AT model) that is modelled using a genetically optimized adaptive fuzzy logic technique, and a framework for predicting and tracking user’s affective trajectory over time. The fuzzy technique is evaluated in terms of its ability to model affective states in comparison to other existing machine learning approaches. The performance of the proposed affect modeling methodology is tested through the deployment of a personalised learning system, and series of offline and online experiments. A hybrid cloud intelligence infrastructure is used to conduct large-scale experiments to analyze user sentiments and associated emotions, using data from a million Facebook users. A performance analysis of the infrastructure on processing, analyzing, and data storage has been carried out, illustrating its viability for large-scale data processing tasks. A comparison of the proposed emotion categorizing approach with Facebook’s sentiment analysis API demonstrates that our approach can achieve comparable performance. Finally, discussions on research contributions to cloud intelligence using sentiment analysis, emotion modeling, big data, and comparisons with other approaches are presented in detail.]]>
机译:<![cdata [ 抽象 本文提出了一种新颖的情感建模方法,将人类情绪纳入智能计算机系统。所提出的方法包括一种从用户引出情绪信息的方法,使用遗传优化的自适应模糊逻辑技术和用于随着时间的推移预测和跟踪用户的情感轨迹的框架的新的情感(AV-AT模型)的新表现形式。与其他现有机器学习方法相比,在其模拟情感状态的能力方面评估模糊技术。通过部署个性化学习系统和一系列离线和在线实验来测试建议的影响建模方法的性能。混合云智能基础设施用于进行大规模实验,以分析用户情绪和相关的情绪,使用来自百万来自Facebook用户的数据。已经执行了对处理,分析和数据存储的基础设施的性能分析,示出了对大规模数据处理任务的可行性。拟议的情感分类方法与Facebook的情感分析API的比较表明,我们的方法可以实现可比性。最后,详细介绍了使用情感分析,情感建模,大数据和与其他方法的云智能研究贡献的研究讨论。 ]]]>

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