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BehavDT: A Behavioral Decision Tree Learning to Build User-Centric Context-Aware Predictive Model

机译:行为:一种行为决策树,学习建立以用户为中心的上下文感知预测模型

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This paper formulates the problem of building a context-aware predictive model based on user diverse behavioral activities with smartphones. In the area of machine learning and data science, a tree-like model as that of decision tree is considered as one of the most popular classification techniques, which can be used to build a data-driven predictive model. The traditional decision tree model typically creates a number of leaf nodes as decision nodes that represent context-specific rigid decisions, and consequently may cause overfitting problem in behavior modeling. However, in many practical scenarios within the context-aware environment, the generalized outcomes could play an important role to effectively capture user behavior. In this paper, we propose a behavioral decision tree, "BehavDT" context-aware model that takes into account user behavior-oriented generalization according to individual preference level. The BehavDT model outputs not only the generalized decisions but also the context-specific decisions in relevant exceptional cases. The effectiveness of our BehavDT model is studied by conducting experiments on individual user real smartphone datasets. Our experimental results show that the proposed BehavDT context-aware model is more effective when compared with the traditional machine learning approaches, in predicting user diverse behaviors considering multi-dimensional contexts.
机译:本文根据用户不同行为活动构建构建背景感知预测模型的问题。在机器学习和数据科学领域,像决策树一样的树形模型被认为是最受欢迎的分类技术之一,可用于构建数据驱动的预测模型。传统的决策树模型通常创建多个叶节点作为表示特定于上下文的刚性决策的决策节点,因此可能导致行为建模中的过度拟合问题。然而,在语境感知环境中的许多实际情况中,广义结果可以发挥重要作用,以有效地捕获用户行为。在本文中,我们提出了一种行为决策树,“行业”上下文感知模型,其根据各个偏好级别考虑用户行为的泛​​化。行为模型不仅输出了广义决策,还输出了相关特殊情况下的上下文决策。通过对个人用户真实智能手机数据集进行实验研究了我们的行为模型的有效性。我们的实验结果表明,与传统的机器学习方法相比,拟议的行为情境感知模型在考虑多维上下文的用户不同行为时更有效。

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