Litcius/Paper detail

A Sketch-based Index for Correlated Dataset Search

Aécio Santos, Aline Bessa, Christopher Musco, Juliana Freire

20222022 IEEE 38th International Conference on Data Engineering (ICDE)28 citationsDOI

Abstract

Dataset search is emerging as a critical capability in both research and industry: it has spurred many novel applications, ranging from the enrichment of analyses of real-world phenomena to the improvement of machine learning models. Recent research in this field has explored a new class of data-driven queries: queries consist of datasets and retrieve, from a large collection, related datasets. In this paper, we study a specific type of data-driven query that supports relational data augmentation through numerical data relationships: given an input query table, find the top-k tables that are both joinable with it and contain columns that are correlated with a column in the query. We propose a novel hashing scheme that allows the construction of a sketch-based index to support efficient correlated table search. We show that our proposed approach is effective and efficient, and achieves better trade-offs that significantly improve both the ranking accuracy and recall compared to the state-of-the-art solutions.

Topics & Concepts

Computer scienceSketchRanking (information retrieval)Table (database)Data miningField (mathematics)Column (typography)Inverted indexIndex (typography)Hash functionInformation retrievalSearch engine indexingAlgorithmTelecommunicationsPure mathematicsFrame (networking)MathematicsComputer securityWorld Wide WebAdvanced Image and Video Retrieval TechniquesData Management and AlgorithmsAlgorithms and Data Compression
A Sketch-based Index for Correlated Dataset Search | Litcius