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Context-aware Users' Preference Models By Integrating Real And Supposed Situation Data

机译:通过集成真实和假设情况数据的上下文感知用户偏好模型

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This paper proposes a novel approach of constructing statistical preference models for context-aware personalized applications such as recommender systems. In constructing context-aware statistical preference models, one of the most important but difficult problems is acquiring a large amount of training data in various contexts/situations. In particular, some situations require a heavy workload to set them up or to collect subjects capable of answering the inquiries under those situations. Because of this difficulty, it is usually done to simply collect a small amount of data in a real situation, or to collect a large amount of data in a supposed situation, i.e., a situation that the subject pretends that he is in the specific situation to answer inquiries. However, both approaches have problems. As for the former approach, the performance of the constructed preference model is likely to be poor because the amount of data is small. For the latter approach, the data acquired in the supposed situation may differ from that acquired in the real situation. Nevertheless, the difference has not been taken seriously in existing researches. In this paper we propose methods of obtaining a better preference model by integrating a small amount of real situation data with a large amount of supposed situation data. The methods are evaluated using data regarding food preferences. The experimental results show that the precision of the preference model can be improved significantly.
机译:本文提出了一种新颖的方法,用于为情境感知的个性化应用程序(例如推荐系统)构建统计偏好模型。在构造上下文感知的统计偏好模型时,最重要但困难的问题之一是在各种上下文/情况下获取大量训练数据。特别是在某些情况下,需要很重的工作量来设置它们或收集能够回答这些问题的主题。由于这种困难,通常要做的是在真实情况下简单地收集少量数据,或在假定的情况下(即受试者假装自己处于特定情况下的情况)收集大量数据。回答查询。但是,两种方法都有问题。对于前一种方法,构造的偏好模型的性能可能很差,因为数据量很小。对于后一种方法,在假定情况下采集的数据可能与实际情况下采集的数据不同。然而,在现有研究中并没有认真对待这种差异。在本文中,我们提出了通过将少量实际情况数据与大量假定情况数据进行集成来获得更好的偏好模型的方法。使用有关食物偏爱的数据对方法进行评估。实验结果表明,偏好模型的精度可以大大提高。

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