학술논문

Action-Centered Information Retrieval
Document Type
Working Paper
Source
Theory and Practice of Logic Programming 20 (2020) 249-272
Subject
Computer Science - Artificial Intelligence
Language
Abstract
Information Retrieval (IR) aims at retrieving documents that are most relevant to a query provided by a user. Traditional techniques rely mostly on syntactic methods. In some cases, however, links at a deeper semantic level must be considered. In this paper, we explore a type of IR task in which documents describe sequences of events, and queries are about the state of the world after such events. In this context, successfully matching documents and query requires considering the events' possibly implicit, uncertain effects and side-effects. We begin by analyzing the problem, then propose an action language based formalization, and finally automate the corresponding IR task using Answer Set Programming.
Comment: Under consideration in Theory and Practice of Logic Programming (TPLP)