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Towards Semantically-Rich Spatial Network Representation Learning via Automated Feature Topic Pairing
Wang, Dongjie1; Liu, Kunpeng1; Mohaisen, David1; Wang, Pengyang2; Lu, Chang Tien3; Fu, Yanjie1
2021-10-20
Source PublicationFrontiers in Big Data
ISSN2624-909X
Volume4Pages:762899
Abstract

Automated characterization of spatial data is a kind of critical geographical intelligence. As an emerging technique for characterization, spatial Representation Learning (SRL) uses deep neural networks (DNNs) to learn non-linear embedded features of spatial data for characterization. However, SRL extracts features by internal layers of DNNs, and thus suffers from lacking semantic labels. Texts of spatial entities, on the other hand, provide semantic understanding of latent feature labels, but is insensible to deep SRL models. How can we teach a SRL model to discover appropriate topic labels in texts and pair learned features with the labels? This paper formulates a new problem: feature-topic pairing, and proposes a novel Particle Swarm Optimization (PSO) based deep learning framework. Specifically, we formulate the feature-topic pairing problem into an automated alignment task between 1) a latent embedding feature space and 2) a textual semantic topic space. We decompose the alignment of the two spaces into: 1) point-wise alignment, denoting the correlation between a topic distribution and an embedding vector; 2) pair-wise alignment, denoting the consistency between a feature-feature similarity matrix and a topic-topic similarity matrix. We design a PSO based solver to simultaneously select an optimal set of topics and learn corresponding features based on the selected topics. We develop a closed loop algorithm to iterate between 1) minimizing losses of representation reconstruction and feature-topic alignment and 2) searching the best topics. Finally, we present extensive experiments to demonstrate the enhanced performance of our method.

KeywordFeature-topic Pairing Semantic Space Spatial Graph Spatial Representation Learning Spatial Space
DOI10.3389/fdata.2021.762899
URLView the original
Indexed ByESCI
Language英語English
WOS Research AreaComputer Science ; Science & Technology - Other Topics
WOS SubjectComputer Science, Information Systems ; Computer Science, Interdisciplinary Applications ; Multidisciplinary Sciences
WOS IDWOS:000715996300001
PublisherFRONTIERS MEDIA SA, AVENUE DU TRIBUNAL FEDERAL 34, LAUSANNE CH-1015, SWITZERLAND
Scopus ID2-s2.0-85118681987
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Citation statistics
Document TypeJournal article
CollectionTHE STATE KEY LABORATORY OF INTERNET OF THINGS FOR SMART CITY (UNIVERSITY OF MACAU)
Corresponding AuthorFu, Yanjie
Affiliation1.Computer Science Department, University of Central Florida, Orlando, United States
2.Computer Science Department, University of Macau, Macao
3.Computer Science Department, Virginia Tech Falls Church, Falls Church, United States
Recommended Citation
GB/T 7714
Wang, Dongjie,Liu, Kunpeng,Mohaisen, David,et al. Towards Semantically-Rich Spatial Network Representation Learning via Automated Feature Topic Pairing[J]. Frontiers in Big Data, 2021, 4, 762899.
APA Wang, Dongjie., Liu, Kunpeng., Mohaisen, David., Wang, Pengyang., Lu, Chang Tien., & Fu, Yanjie (2021). Towards Semantically-Rich Spatial Network Representation Learning via Automated Feature Topic Pairing. Frontiers in Big Data, 4, 762899.
MLA Wang, Dongjie,et al."Towards Semantically-Rich Spatial Network Representation Learning via Automated Feature Topic Pairing".Frontiers in Big Data 4(2021):762899.
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