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Estimating Adaptive Individual Interests and Needs Based on Online Local Variational Inference for a Logistic Regression Mixture Model

机译:Logistic回归混合模型基于在线局部变分推断的自适应个人兴趣和需求估计

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In real companies engaged in economic activities through transactions involving consumer items, such as retail, distribution, finance, and information materials, supplying an opportunity to customers to choose specialized items is an important factor that can improve customer satisfaction and convenience allowing their diverse and time-dependent needs to be met. However, capturing the specialized needs of customers accurately is a difficult task because their needs depend on time, context, situation, and meaning. Recently, physical computational environments have been developing rapidly, thereby allowing easy implementation to sense a customer's action and deal with it sequentially. In this paper, we propose a personalized method to predict individual interests and demands appropriately. In particular, the system learns the customers' situation, meaning, and action from their action history, and reflects a feedback of the result to predict the next action. To realize this method, we utilize the following two methodologies: the mathematical model of meaning (MMM), which is a semantic associative search technology; and the local variational inference (LVI), which is an approximation of the Bayesian inference. A numerical experiment shows that the proposed method performed better than a typical method.
机译:在通过涉及涉及零售,分销,金融和信息材料等消费项目的交易从事经济活动的真实公司中,为客户提供选择特殊项目的机会是一个重要因素,可以提高客户满意度和便利性,从而使他们的时间多样化依赖的需要得到满足。但是,准确地捕获客户的特殊需求是一项艰巨的任务,因为他们的需求取决于时间,上下文,情况和含义。近来,物理计算环境发展迅速,从而允许容易地实施以感测客户的动作并顺序地对其进行处理。在本文中,我们提出了一种个性化的方法来适当地预测个人的兴趣和需求。特别是,该系统从客户的行为历史中了解客户的状况,含义和行为,并反映结果的反馈以预测下一个行为。为了实现此方法,我们利用以下两种方法:意义数学模型(MMM),这是一种语义关联搜索技术;以及局部变分推论(LVI),它是贝叶斯推论的近似值。数值实验表明,所提出的方法比典型方法具有更好的性能。

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