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Abstractive Tabular Dataset Summarization via Knowledge Base Semantic Embeddings

Authors :
Azunre, Paul
Corcoran, Craig
Sullivan, David
Honke, Garrett
Ruppel, Rebecca
Verma, Sandeep
Morgan, Jonathon
Publication Year :
2018

Abstract

This paper describes an abstractive summarization method for tabular data which employs a knowledge base semantic embedding to generate the summary. Assuming the dataset contains descriptive text in headers, columns and/or some augmenting metadata, the system employs the embedding to recommend a subject/type for each text segment. Recommendations are aggregated into a small collection of super types considered to be descriptive of the dataset by exploiting the hierarchy of types in a pre-specified ontology. Using February 2015 Wikipedia as the knowledge base, and a corresponding DBpedia ontology as types, we present experimental results on open data taken from several sources--OpenML, CKAN and data.world--to illustrate the effectiveness of the approach.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.1804.01503
Document Type :
Working Paper