Modeling Diverse Relevance Patterns in Ad-hoc Retrieval

05/15/2018
by   Yixing Fan, et al.
0

Assessing relevance between a query and a document is challenging in ad-hoc retrieval due to its diverse patterns, i.e., a document could be relevant to a query as a whole or partially as long as it provides sufficient information for users' need. Such diverse relevance patterns require an ideal retrieval model to be able to assess relevance in the right granularity adaptively. Unfortunately, most existing retrieval models compute relevance at a single granularity, either document-wide or passage-level, or use fixed combination strategy, restricting their ability in capturing diverse relevance patterns. In this work, we propose a data-driven method to allow relevance signals at different granularities to compete with each other for final relevance assessment. Specifically, we propose a HIerarchical Neural maTching model (HiNT) which consists of two stacked components, namely local matching layer and global decision layer. The local matching layer focuses on producing a set of local relevance signals by modeling the semantic matching between a query and each passage of a document. The global decision layer accumulates local signals into different granularities and allows them to compete with each other to decide the final relevance score. Experimental results demonstrate that our HiNT model outperforms existing state-of-the-art retrieval models significantly on benchmark ad-hoc retrieval datasets.

READ FULL TEXT
research
02/22/2021

Graph-based Hierarchical Relevance Matching Signals for Ad-hoc Retrieval

The ad-hoc retrieval task is to rank related documents given a query and...
research
03/16/2021

A Neural Passage Model for Ad-hoc Document Retrieval

Traditional statistical retrieval models often treat each document as a ...
research
12/17/2020

Literature Retrieval for Precision Medicine with Neural Matching and Faceted Summarization

Information retrieval (IR) for precision medicine (PM) often involves lo...
research
08/25/2021

Podcast Metadata and Content: Episode Relevance andAttractiveness in Ad Hoc Search

Rapidly growing online podcast archives contain diverse content on a wid...
research
10/21/2018

3D shape retrieval basing on representatives of classes

In this paper, we present an improvement of our proposed technique for 3...
research
06/30/2017

Co-PACRR: A Context-Aware Neural IR Model for Ad-hoc Retrieval

Neural IR models, such as DRMM and PACRR, have achieved strong results b...
research
05/23/2000

Applying MDL to Learning Best Model Granularity

The Minimum Description Length (MDL) principle is solidly based on a pro...

Please sign up or login with your details

Forgot password? Click here to reset