有监督和无监督特征选择从电话交谈内容推断其社交性质。

Anthony Stark, Izhak Shafran, Jeffrey Kaye
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引用次数: 0

摘要

可靠地推断电话交谈性质的能力开辟了各种各样的应用,从设计智能手机上的上下文敏感用户界面,到为社会心理学家和社会科学家提供新的工具来研究和理解不同背景下不同人群的社会生活。使用一年中从八个住宅收集的日常电话对话的独特语料库,我们调查了仅从内容中提取的流行特征在分类来自他人的面向业务的电话中的效用。通过特征选择实验,我们发现使用一小部分特征集可以对大多数呼叫进行鲁棒性识别。值得注意的是,从非监督方法中学习的特征,特别是潜在的狄利克雷分配,几乎与从监督方法中学习的特征一样好。在这个任务中学习到的无监督聚类显示了对电话交谈的社交性质进行更细粒度推断的希望。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Supervised and Unsupervised Feature Selection for Inferring Social Nature of Telephone Conversations from Their Content.

The ability to reliably infer the nature of telephone conversations opens up a variety of applications, ranging from designing context-sensitive user interfaces on smartphones, to providing new tools for social psychologists and social scientists to study and understand social life of different subpopulations within different contexts. Using a unique corpus of everyday telephone conversations collected from eight residences over the duration of a year, we investigate the utility of popular features, extracted solely from the content, in classifying business-oriented calls from others. Through feature selection experiments, we find that the discrimination can be performed robustly for a majority of the calls using a small set of features. Remarkably, features learned from unsupervised methods, specifically latent Dirichlet allocation, perform almost as well as with as those from supervised methods. The unsupervised clusters learned in this task shows promise of finer grain inference of social nature of telephone conversations.

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