USI回答:自然语言问题回答(半)结构化的行业数据

Ulli Waltinger, Dan G. Tecuci, Mihaela Olteanu, Vlad Mocanu, S. Sullivan
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引用次数: 13

摘要

本文描述了一个半结构化工业数据的自然语言问答系统USI Answers。本文报告了向大量业务用户提供对企业数据的方便访问这一目标所取得的进展,其中大多数业务用户不熟悉底层数据源的特定语法或语义。额外的复杂性来自于数据的性质,即结构化和非结构化。提出的解决方案允许用户用自然语言表达问题,使系统对查询的解释变得明显,并且允许轻松地调整和重新制定查询。该应用程序已被西门子能源公司的1500多名用户使用。我们在一个由车队数据组成的数据集上评估我们的方法。
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USI Answers: Natural Language Question Answering Over (Semi-) Structured Industry Data
This paper describes USI Answers a natural language question answering system for semi-structured industry data. The paper reports on the progress towards the goal of offering easy access to enterprise data to a large number of business users, most of whom are not familiar with the specific syntax or semantics of the underlying data sources. Additional complications come from the nature of the data, which comes both as structured and unstructured. The proposed solution allows users to express questions in natural language, makes apparent the system’s interpretation of the query, and allows easy query adjustment and reformulation. The application is in use by more than 1500 users from Siemens Energy. We evaluate our approach on a data set consisting of fleet data.
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