Towards a Framework for Closed-Domain Question Answering in Italian

Emanuele Damiano, Raffaele Spinelli, M. Esposito, G. Pietro
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引用次数: 13

Abstract

In the last years, Cognitive Systems are increasingly appearing, offering new ways for developing Question Answering solutions able to autonomously extract an answer for a question formulated in natural language. Currently, to the best of our knowledge, most of the available Question Answering solutions are designed for the English language and use SQL-like knowledge bases to provide factual answers to a natural language question. Starting from these considerations, this work presents a preliminary Question Answering framework for closed-domains, like Cultural Heritage. It has been expressly thought to extract factual answers from collections of documents by operating with the Italian language. Such a framework exploits a variety of NLP methods for the Italian language to help the understanding of user's questions and the extraction of precise answers from textual passages contained into documents. Moreover, Deep Learning techniques have been used to proficiently understand the topic of a question, whereas a rule-based approach relying on dictionaries has been applied for the annotation and indexing of collections of documents in Italian, enabling their usage into a state-of-the-art Information Retrieval engine. An experimental session has also been arranged, showing very promising preliminary results.
意大利语封闭域问答框架的构建
在过去的几年里,认知系统越来越多地出现,为开发问答解决方案提供了新的方法,这些解决方案能够自主地为用自然语言表述的问题提取答案。目前,据我们所知,大多数可用的问答解决方案都是为英语设计的,并使用类似sql的知识库来为自然语言问题提供事实答案。从这些考虑出发,这项工作提出了一个初步的封闭领域问答框架,如文化遗产。它被明确地认为是通过使用意大利语从文件集合中提取事实答案。这种框架利用意大利语的各种NLP方法来帮助理解用户的问题,并从包含在文档中的文本段落中提取精确的答案。此外,深度学习技术已被用于熟练地理解问题的主题,而依赖于字典的基于规则的方法已被应用于意大利语文档集合的注释和索引,使其能够用于最先进的信息检索引擎。还安排了一次实验,显示出非常有希望的初步结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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