Personalized location models with adaptive mixtures

Moshe Lichman, Dimitrios Kotzias, Padhraic Smyth
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引用次数: 4

Abstract

Personalization is increasingly important for a range of applications that rely on location-based modeling. A key aspect in building personalized models is using population-level information to smooth noisy sparse data at the individual level. In this paper we develop a general mixture model framework for learning individual-level location models where the model adaptively combines different types of smoothing information. In a series of experiments with Twitter geolocation data and Gowalla check-in data we demonstrate that the proposed approach can be significantly more accurate than more traditional smoothing and matrix factorization techniques. The improvement in performance over matrix factorization is pronounced and may be explained by the tendency of dimensionality reduction methods to over-smooth and not retain enough detail at the individual level.
具有自适应混合的个性化位置模型
对于依赖于基于位置的建模的一系列应用程序来说,个性化变得越来越重要。建立个性化模型的一个关键方面是使用种群级信息来平滑个体级的噪声稀疏数据。在本文中,我们开发了一个通用的混合模型框架,用于学习个人层面的位置模型,该模型自适应地组合了不同类型的平滑信息。在Twitter地理位置数据和Gowalla签到数据的一系列实验中,我们证明了所提出的方法比传统的平滑和矩阵分解技术要准确得多。与矩阵分解相比,性能的提高是明显的,这可能是由于降维方法倾向于过于平滑,而在个体层面上没有保留足够的细节。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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