推荐系统中的用户网络建模

D. Vogiatzis, N. Tsapatsoulis
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引用次数: 2

摘要

推荐系统,在协同过滤变体中,是一种流行的工具,通过让用户根据志同道合的用户的偏好选择“有趣”的项目,将用户从信息混乱中赶出来。在这样一个系统中,随着越来越多的用户进来评估项目(无论是信息片段、产品还是其他),一个用户网络开始形成。在本文中,我们对这样一个网络的动力学很感兴趣,特别是我们研究是否存在一个隐藏的定律,无论其大小如何,它都能捕捉到这种网络的本质。在其他用途中,发现这样一个定律将允许生成合成数据集,这些数据集足够真实,可以用于模拟目的。此外,它还有助于寻找某一特定主题的已知专家或有影响力的用户等信息搜集活动。在相关领域的类似研究表明幂律的存在,而幂律似乎无处不在。然而,在我们的工作中,我们没有检测到这样一个定律的存在,相反,我们发现了代表用户的图的节点和代表用户之间相似性的边之间的指数关系。特别是节点度的对数与节点的降序排序呈线性关系。上述结论是通过对两个版本的电影镜头数据集(一个包含10万个用户评价,而另一个包含100万个评价)的扩展实验证明的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modeling User Networks in Recommender Systems
Recommender systems, in the collaborative filtering variation, are popular tools used to drive users out of information clutter, by letting them select ¿interesting¿ items based on the preferences of similarly minded users. In such a system as more users come in to evaluate items (be they information pieces, products or otherwise), a network of users starts to be formed. In this paper we are interested in the dynamics of such a network, in particular we investigate if there is a hidden law that captures the essence of such networks irrespective of their size. The discovery of such a law would allow, among other usages, generation of synthetic data sets, realistic enough to be used for simulation purposes. Furthermore, it would be useful for information-seeking activities such as locating known experts or influential users on a particular subject. Similar work in related fields suggested the existence of power-laws, which seem to be ubiquitous. However, in our work we did not detect the presence of such a law, instead we discovered an exponential relationship between the nodes of a graph representing users, and edges representing similarity between users. In particular the logarithm of the degree of node is linearly related to the ranking of the node in a decreasing order. The above conclusion is justified by extended experiments on two versions of the movie lens data set (one comprised 100,000 user evaluations, while the other comprised 1,000,0000 evaluations).
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