社会科学实验中文本的统计模型

A Model of Text for Experimentation in the Social Sciences

Journal of the American Statistical Association · 2016
被引 731 · 同刊同年前 2%
ABS 4

中文导读

本文提出一种层次混合成员模型,通过将主题权重与文档级协变量(如新闻来源、发布时间)关联,支持社会科学研究者利用文本数据进行测量、实验和因果推断。

Abstract

Statistical models of text have become increasingly popular in statistics and computer science as a method of exploring large document collections. Social scientists often want to move beyond exploration, to measurement and experimentation, and make inference about social and political processes that drive discourse and content. In this article, we develop a model of text data that supports this type of substantive research. Our approach is to posit a hierarchical mixed membership model for analyzing topical content of documents, in which mixing weights are parameterized by observed covariates. In this model, topical prevalence and topical content are specified as a simple generalized linear model on an arbitrary number of document-level covariates, such as news source and time of release, enabling researchers to introduce elements of the experimental design that informed document collection into the model, within a generally applicable framework. We demonstrate the proposed methodology by analyzing a collection of news reports about China, where we allow the prevalence of topics to evolve over time and vary across newswire services. Our methods quantify the effect of news wire source on both the frequency and nature of topic coverage. Supplementary materials for this article are available online.

文本分析统计模型社会科学内容分析机器学习