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5 months ago

Learning Semantic Annotations for Tabular Data

Jiaoyan Chen; Ernesto Jimenez-Ruiz; Ian Horrocks; Charles Sutton

Learning Semantic Annotations for Tabular Data

Abstract

The usefulness of tabular data such as web tables critically depends on understanding their semantics. This study focuses on column type prediction for tables without any meta data. Unlike traditional lexical matching-based methods, we propose a deep prediction model that can fully exploit a table's contextual semantics, including table locality features learned by a Hybrid Neural Network (HNN), and inter-column semantics features learned by a knowledge base (KB) lookup and query answering algorithm.It exhibits good performance not only on individual table sets, but also when transferring from one table set to another.

Code Repositories

alan-turing-institute/SemAIDA
Official
Mentioned in GitHub

Benchmarks

BenchmarkMethodologyMetrics
column-type-annotation-on-t2dv2HNN + P2Vec
Accuracy (%): 96.6
column-type-annotation-on-wikipediags-ctaHNN
Accuracy (%): 65.5

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Learning Semantic Annotations for Tabular Data | Papers | HyperAI