推特上的大规模高精度主题建模

Shuang-Hong Yang, A. Kolcz, A. Schlaikjer, Pankaj Gupta
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引用次数: 117

摘要

我们感兴趣的是将连续的稀疏和嘈杂的文本流(称为“tweets”)实时组织成一个包含数百个主题的本体,具有可测量和严格的高精度。这种推断是在全面的Twitter数据流上执行的,这些数据的统计分布随着时间的推移而迅速发展。在工业环境中实施,有可能影响到实际用户并使其可见,因此必须克服许多实际挑战。我们提出了一系列有助于部署系统的主题建模技术。这些包括非主题推文检测,自动标记数据采集,人工计算评估,诊断和纠正学习,最重要的是,高精度主题推理。后者代表了一种新的用于tweet文本分类的两阶段训练算法和用于将文本与附加信息源结合的闭环推理机制。最终系统在总体覆盖范围内达到93%的精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Large-scale high-precision topic modeling on twitter
We are interested in organizing a continuous stream of sparse and noisy texts, known as "tweets", in real time into an ontology of hundreds of topics with measurable and stringently high precision. This inference is performed over a full-scale stream of Twitter data, whose statistical distribution evolves rapidly over time. The implementation in an industrial setting with the potential of affecting and being visible to real users made it necessary to overcome a host of practical challenges. We present a spectrum of topic modeling techniques that contribute to a deployed system. These include non-topical tweet detection, automatic labeled data acquisition, evaluation with human computation, diagnostic and corrective learning and, most importantly, high-precision topic inference. The latter represents a novel two-stage training algorithm for tweet text classification and a close-loop inference mechanism for combining texts with additional sources of information. The resulting system achieves 93% precision at substantial overall coverage.
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