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Voting Advice Applications: Missing Value Estimation Using Matrix Factorization and Collaborative Filtering

机译:投票建议应用程序:使用矩阵分解和协同过滤的缺失值估计

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A Voting Advice Application (VAA) is a web application that recommends to a voter the party or the candidate, who replied like him/her in an online questionnaire. Every question is responding to the political positions of each party. If the voter fails to answer some questions, it is likely the VAA to offer him/her the wrong candidate. Therefore, it is necessary to inspect the missing data (not answered questions) and try to estimate them. In this paper we formulate the VAA missing value problem and investigate several different approaches of collaborative filtering to tackle it. The evaluation of the proposed approaches was done by using the data obtained from the Cypriot presidential elections of February 2013 and the parliamentary elections in Greece in May, 2012. The corresponding datasets are made freely available to other researchers working in the areas of VAA and recommender systems through the Web.
机译:投票建议应用程序(VAA)是一种Web应用程序,向投票人推荐当事方或候选人,他们像他/她一样在在线调查表中答复。每个问题都是对每个政党政治立场的回应。如果选民未能回答某些问题,VAA很有可能会为他/她提供错误的候选人。因此,有必要检查丢失的数据(未回答的问题)并尝试对其进行估计。在本文中,我们提出了VAA缺失值问题,并研究了几种不同的协作过滤方法来解决该问题。通过使用从2013年2月的塞浦路斯总统选举和2012年5月的希腊议会选举获得的数据对提议的方法进行了评估。相应的数据集可免费提供给VAA领域的其他研究人员和推荐人通过Web的系统。

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