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arxiv 1911.06311 v3 pith:A2HEXN3Q submitted 2019-11-14 cs.DB cs.CLcs.LG

Sato: Contextual Semantic Type Detection in Tables

classification cs.DB cs.CLcs.LG
keywords datasemanticsatocolumnsperformancetablestypescontext
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Detecting the semantic types of data columns in relational tables is important for various data preparation and information retrieval tasks such as data cleaning, schema matching, data discovery, and semantic search. However, existing detection approaches either perform poorly with dirty data, support only a limited number of semantic types, fail to incorporate the table context of columns or rely on large sample sizes for training data. We introduce Sato, a hybrid machine learning model to automatically detect the semantic types of columns in tables, exploiting the signals from the context as well as the column values. Sato combines a deep learning model trained on a large-scale table corpus with topic modeling and structured prediction to achieve support-weighted and macro average F1 scores of 0.925 and 0.735, respectively, exceeding the state-of-the-art performance by a significant margin. We extensively analyze the overall and per-type performance of Sato, discussing how individual modeling components, as well as feature categories, contribute to its performance.

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  1. TabEmb: Joint Semantic-Structure Embedding for Table Annotation

    cs.LG 2026-04 unverdicted novelty 5.0

    TabEmb decouples LLM-based semantic column embeddings from graph-based structural modeling to produce joint representations that improve table annotation tasks.