Effectiveness Perspectives and a Deep Relevance Model for Spatial Keyword Queries

Author:

Liu Shang1ORCID,Cong Gao1ORCID,Feng Kaiyu2ORCID,Gu Wanli3ORCID,Zhang Fuzheng3ORCID

Affiliation:

1. Nanyang Technological University, Singapore, Singapore

2. Beijing Institute of Technolog, Beijing, China

3. Meituan, Beijing, China

Abstract

Geo-textual objects with both geographical location and textual description are gaining in prevalence. Over the past decades, substantial research has been conducted on spatial keyword queries, which integrate location into keyword-based querying of geo-textual content. However, existing proposals mostly focus on efficiency for processing spatial keyword queries, and little effort was made to address the effectiveness perspectives. In this work, using two datasets with ground truth query results, we evaluate the effectiveness of standard spatial keyword queries. Our evaluation results show that the TkQ query that ranks objects by a weighted combination of spatial proximity and text relevance is the most effective. Motivated by the finding, we propose a Deep relevance with Weight learning (DrW) model to further improve the effectiveness of the retrieval ranking. DrW is featured with two novel ideas: First, we propose a neural network architecture to learn the text relevance matching over the local interaction between the query and geo-textual objects. Second, we find that a query-dependent weight to balance text relevance and spatial proximity in ranking can improve effectiveness, and we develop a learning-based method to learn the query-dependent weight. Experimental results reveal that our model outperforms state-of-the-art methods on effectiveness, with improvements up to 32.15%, 32.34%, and 33.00% in terms of NDCG@3, NDCG@5, and MRR.

Funder

MOE Tier-2 grants

Publisher

Association for Computing Machinery (ACM)

Reference47 articles.

1. Ritesh Ahuja , Nikos Armenatzoglou , Dimitris Papadias , and George J Fakas . 2015. Geo-social keyword search . In SSTD. Springer , 431--450. Ritesh Ahuja, Nikos Armenatzoglou, Dimitris Papadias, and George J Fakas. 2015. Geo-social keyword search. In SSTD. Springer, 431--450.

2. Xin Cao , Gao Cong , and Christian S . Jensen . 2010 . Retrieving Top-k Prestige-Based Relevant Spatial Web Objects. In VLDB. 373--384. Xin Cao, Gao Cong, and Christian S. Jensen. 2010. Retrieving Top-k Prestige-Based Relevant Spatial Web Objects. In VLDB. 373--384.

3. Xin Cao Gao Cong Christian S Jensen and Beng Chin Ooi. 2011. Collective spatial keyword querying. In SIGMOD. 373--384. Xin Cao Gao Cong Christian S Jensen and Beng Chin Ooi. 2011. Collective spatial keyword querying. In SIGMOD. 373--384.

4. Zhe Cao Tao Qin Tie-Yan Liu Ming-Feng Tsai and Hang Li. 2007. Learning to rank: from pairwise approach to listwise approach. In ICML. 129--136. Zhe Cao Tao Qin Tie-Yan Liu Ming-Feng Tsai and Hang Li. 2007. Learning to rank: from pairwise approach to listwise approach. In ICML. 129--136.

5. Ariel Cary Ouri Wolfson and Naphtali Rishe. 2010. Efficient and Scalable Method for Processing Top-k Spatial Boolean Queries. In SSDBM. 87--95. Ariel Cary Ouri Wolfson and Naphtali Rishe. 2010. Efficient and Scalable Method for Processing Top-k Spatial Boolean Queries. In SSDBM. 87--95.

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