Keyphrase Generation for Scientific Document Retrieval
Florian Boudin, Ygor Gallina, Akiko Aizawa
Abstract
Sequence-to-sequence models have lead to significant progress in keyphrase generation, but it remains unknown whether they are reliable enough to be beneficial for document retrieval. This study provides empirical evidence that such models can significantly improve retrieval performance, and introduces a new extrinsic evaluation framework that allows for a better understanding of the limitations of keyphrase generation models. Using this framework, we point out and discuss the difficulties encountered with supplementing documents with -not present in textkeyphrases, and generalizing models across domains. Our code is available at https:// github.com/boudinfl/ir-using-kg.
Topics & Concepts
Computer scienceInformation retrievalCode (set theory)Sequence (biology)Point (geometry)Document retrievalNatural language processingProgramming languageSet (abstract data type)GeometryGeneticsBiologyMathematicsAdvanced Text Analysis TechniquesInformation Retrieval and Search Behavior