Ontology-based personalised retrieval in support of reminiscence
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摘要
This research proposes a knowledge-based framework for integrating ontology-based personalised retrieval and reminiscence support. The aim is to assist people in recalling, browsing and re-discovering events from their lives by considering their profiles and background knowledge and providing them with customised information retrieval. To model a user’s background knowledge, this paper defines a user profile space (UPS) model and describes its construction method. The model has a dynamic structure based on relevance feedback and interactions with users. Furthermore, this work introduces a multi-ontology query expansion model which uses user-oriented ontologies, UPSs and semantic feature-selection algorithms to expand queries. In this model, knowledge-spanning trees are generated from ontology/UPS graphs based on the queries. These knowledge-spanning trees contain semantic features which enhance the representations of the original queries and further facilitate personalised retrieval on a semantic basis. The experimental results indicate that the proposed approach consistently outperforms term-based retrieval on precision, recall and f-score, which proves the positive effect of using ontology/user profile spaces in query expansion and personalised retrieval.
论文关键词:Ontology graph,User profile space,Knowledge spanning tree,Feature selection,Personalised retrieval,Reminiscence support
论文评审过程:Received 7 August 2012, Revised 27 January 2013, Accepted 3 February 2013, Available online 16 February 2013.
论文官网地址:https://doi.org/10.1016/j.knosys.2013.02.004