解释数据驱动的文档分类

David Martens, F. Provost
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引用次数: 264

摘要

许多文档分类应用程序需要人们理解经理、面向客户的员工和技术团队做出数据驱动分类决策的原因。预测模型将文档视为要分类的数据,并且文档数据具有非常高的维度,通常具有数万到数百万个变量(单词)。不幸的是,由于高维,理解文档分类器做出的决策非常困难。本文首先扩展了解释智能系统的最相关的先前理论模型,以解释一些缺失的元素。主要的理论贡献是将一种新的解释定义为最小的单词集(通常是术语),这样从文档中删除该集合中的所有单词就会改变所感兴趣的类的预测类。我们提出了一种算法来找到这样的解释,以及一个框架来评估这种算法的性能。我们通过一个现实世界文档分类任务的案例研究来展示新方法的价值:将包含令人反感内容的网页分类,目标是允许广告商选择不让他们的广告出现在这些页面上。关于新闻故事主题分类的第二个实证演示表明,这些解释是简洁且特定于文档的,并且能够提供对分类决策的确切原因、分类模型的工作原理以及业务应用程序本身的理解。我们还说明了解释文档的分类如何有助于提高数据质量和模型性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Explaining Data-Driven Document Classifications
Many document classification applications require human understanding of the reasons for data-driven classification decisions by managers, client-facing employees, and the technical team. Predictive models treat documents as data to be classified, and document data are characterized by very high dimensionality, often with tens of thousands to millions of variables (words). Unfortunately, due to the high dimensionality, understanding the decisions made by document classifiers is very difficult. This paper begins by extending the most relevant prior theoretical model of explanations for intelligent systems to account for some missing elements. The main theoretical contribution is the definition of a new sort of explanation as a minimal set of words (terms, generally), such that removing all words within this set from the document changes the predicted class from the class of interest. We present an algorithm to find such explanations, as well as a framework to assess such an algorithm's performance. We demonstrate the value of the new approach with a case study from a real-world document classification task: classifying web pages as containing objectionable content, with the goal of allowing advertisers to choose not to have their ads appear on those pages. A second empirical demonstration on news-story topic classification shows the explanations to be concise and document-specific, and to be capable of providing understanding of the exact reasons for the classification decisions, of the workings of the classification models, and of the business application itself. We also illustrate how explaining the classifications of documents can help to improve data quality and model performance.
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