English

Entity-Relationship Search over the Web

Information Retrieval 2018-10-09 v1

Abstract

Entity-Relationship (E-R) Search is a complex case of Entity Search where the goal is to search for multiple unknown entities and relationships connecting them. We assume that a E-R query can be decomposed as a sequence of sub-queries each containing keywords related to a specific entity or relationship. We adopt a probabilistic formulation of the E-R search problem. When creating specific representations for entities (e.g. context terms) and for pairs of entities (i.e. relationships) it is possible to create a graph of probabilistic dependencies between sub-queries and entity plus relationship representations. To the best of our knowledge this represents the first probabilistic model of E-R search. We propose and develop a novel supervised Early Fusion-based model for E-R search, the Entity-Relationship Dependence Model (ERDM). It uses Markov Random Field to model term dependencies of E-R sub-queries and entity/relationship documents. We performed experiments with more than 800M entities and relationships extractions from ClueWeb-09-B with FACC1 entity linking. We obtained promising results using 3 different query collections comprising 469 E-R queries, with results showing that it is possible to perform E-R search without using fix and pre-defined entity and relationship types, enabling a wide range of queries to be addressed.

Keywords

Cite

@article{arxiv.1810.03235,
  title  = {Entity-Relationship Search over the Web},
  author = {Pedro Saleiro and Natasa Milic-Frayling and Eduarda Mendes Rodrigues and Carlos Soares},
  journal= {arXiv preprint arXiv:1810.03235},
  year   = {2018}
}
R2 v1 2026-06-23T04:31:24.636Z