Publication Date:
2016
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.
Iris type:
04.01 Contributo in Atti di convegno
Keywords:
Cognitive Computing; Question answering; NLP; Unstructured Information; Italian Text.
List of contributors: