Detalhes bibliográficos
Ano de defesa: |
2023 |
Autor(a) principal: |
SILVA, Levy de Souza |
Orientador(a): |
BARBOSA, Luciano de Andrade |
Banca de defesa: |
Não Informado pela instituição |
Tipo de documento: |
Tese
|
Tipo de acesso: |
Acesso aberto |
Idioma: |
eng |
Instituição de defesa: |
Universidade Federal de Pernambuco
|
Programa de Pós-Graduação: |
Programa de Pos Graduacao em Ciencia da Computacao
|
Departamento: |
Não Informado pela instituição
|
País: |
Brasil
|
Palavras-chave em Português: |
|
Link de acesso: |
https://repositorio.ufpe.br/handle/123456789/55271
|
Resumo: |
The Internet is a rich source of structured information. From Web Tables to public datasets, there exists a huge corpus of relational data online. Previous studies estimate that over 418M tables, in Hypertext Markup Language (HTML) format, can be found on the Web. Not limited to them, a large number of data repositories also provide ac- cess to thousands of datasets. As a result of that, over the last years, a growing body of work has begun to explore this data for several downstream applications. For example, Web Tables have been widely utilized for the task of Question Answering (QA), whose goal is to retrieve a table that answers a query from a table collection. In the context of datasets, their most popular application is the dataset retrieval task, which aims to find structured datasets for an end-user. The point of intersection for table/dataset re- trieval is that they need to match unstructured queries and relational data, in addition to being a ranking task. Moreover, the core challenge of this task is how to construct a robust matching model for computing this similarity degree. Towards this front, this thesis work is divided into three parts. In the first one, we explore the problem of QA Table Retrieval, in which our goal is to outline the best solutions for this task. In se- quence, we focus on an unexplored news-table matching problem, whose Web Tables are applied to augmenting news stories. Lastly, we concentrate on the dataset retrieval task. Specifically, we summarize our main contributions as follows: (I) we present a novel tax- onomy for table retrieval that classifies the table retrieval methods into five groups, from probabilistic approaches to sophisticated neural networks. Our research also points out that the best results for this task are achieved by using deep neural models, built on top of recurrent networks and convolutional architectures; (II) we introduce a novel atten- tion model based on Bidirectional Encoder Representations from Transformers (BERT) for computing the similarity degree between news stories and Web Tables, in addition to comparing its performance against Information Retrieval (IR) techniques, document/sen- tence encoders, text-matching models, and neural IR approaches. In short, a hypothesis test confirms that our approach outperforms all baselines in terms of the Mean Reciprocal Ranking metric; and (III) we propose Data Augmentation Pipeline for Dataset Retrieval (DAPDR), a solution that leverages Large Language Models (LLMs) to create synthetic questions for dataset descriptions, which are then applied to training supervised retrievers. Finally, we evaluate DAPDR on dataset search benchmarks using a set of dense retrievers, whose main results show that the retrievers tuned in DAPDR statistically outperform the original models at different Normalized Discounted Cumulative Gain (NDCG) levels. |