Improving understandability in consumer health information search: Uevora @ 2016 fire chis


Autoria(s): Yang, Hua; Gonçalves, Teresa
Data(s)

06/02/2017

06/02/2017

01/09/2016

01/12/2016

Resumo

This paper presents our work at 2016 FIRE CHIS. Given a CHIS query and a document associated with that query, the task is to classify the sentences in the document as relevant to the query or not; and further classify the relevant sentences to be supporting, neutral or opposing to the claim made in the query. In this paper, we present two different approaches to do the classification. With the first approach, we implement two models to satisfy the task. We first implement an information retrieval model to retrieve the sentences that are relevant to the query; and then we use supervised learning method to train a classification model to classify the relevant sentences into support, oppose or neutral. With the second approach, we only use machine learning techniques to learn a model and classify the sentences into four classes (relevant & support, relevant & neutral, relevant & oppose, irrelevant & neutral). Our submission for CHIS uses the first approach.

Erasmus Mundus LEADER project

Identificador

Hua Yang and Teresa Gonc ̧alves. Improving understandability in consumer health information search: Uevora @ 2016 fire chis. In Prasenjit Majum- der, Mandar Mitra, Parth Mehta, Jainisha Sankhavara, and Kripabandhu Ghosh, editors, Working notes of FIRE 2016 – Forum for Information Retrieval Evaluation, volume 1737, pages 228–232, Kolkata, IN, December 2016. CEUR.

http://hdl.handle.net/10174/20671

nd

tcg@uevora.pt

498

Idioma(s)

eng

Publicador

CEUR

Direitos

openAccess

Tipo

article