基于机器学习的智能家居用户行为模式研究与挖掘

Zhao Yan, Zhang Jinglu, Zhao Wanfang
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引用次数: 2

摘要

准确有效地挖掘智能家居用户的行为模式,从而分析智能家居用户的个性化行为特征,进而分析智能家居用户的偏好。有针对性地为用户提供可靠有效的服务。提出了一种基于机器学习的智能家居用户行为模式挖掘方法。构建智能家居用户行为模式特征数据模型,采用关联规则特征分解方法对用户行为模式进行分析并重构信息。根据大数据用户行为模式的差异,分析定向行为的特征,根据用户的行为偏好和信息融合对特征进行分类,用大数据分类模型建立用户行为模型。根据用户的行为特征,实现智能决策和判断,并利用机器学习算法进行收敛控制,提高了用户行为模式挖掘的自适应性。仿真结果表明,该方法在智能家居用户行为模式挖掘中具有准确性和收敛性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research and Mining of Intelligent Home User Behavior Pattern Based on Machine Learning
The behavior patterns of smart home users are mined accurately and effectively, so as to analyze the personalized behavior characteristics of smart home users, and then analyze the preferences of smart home users. The reliable and effective services are provided to users in a targeted manner. A method for mining the behavior patterns of smart home users is proposed based on machine learning. The characteristic data model of smart home user behavior pattern is constructed, and the association rule feature decomposition method is used to analyze the user behavior pattern and reconstruct the information. According to the difference of user behavior pattern big data, the characteristics of directional behavior are analyzed, the characteristics are classified according to the user's behavior preference and information fusion, a user behavior model is set up with big data classification model. According to the behavior characteristics of users, the intelligent decision and judgment are realized, and the convergence control is carried out by using machine learning algorithm, which improves the self-adaptability of user behavior pattern mining. The simulation results show that the proposed method is accurate and convergent in behavior pattern mining of smart home users.
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