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Ling Chen

Researcher at University of Technology, Sydney

Publications -  143
Citations -  3860

Ling Chen is an academic researcher from University of Technology, Sydney. The author has contributed to research in topics: Recommender system & Graph (abstract data type). The author has an hindex of 28, co-authored 128 publications receiving 3166 citations. Previous affiliations of Ling Chen include University of Queensland & Leibniz University of Hanover.

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Proceedings ArticleDOI

LCARS: a location-content-aware recommender system

TL;DR: LCARS is proposed, a location-content-aware recommender system that offers a particular user a set of venues or events by giving consideration to both personal interest and local preference, and a scalable query processing technique is developed by extending the classic Threshold Algorithm.
Proceedings ArticleDOI

Event detection from flickr data through wavelet-based spatial analysis

TL;DR: The effort in detecting events from Flickr photos by exploiting the tags supplied by users to annotate photos is presented, where a wavelet transform is employed to suppress noise and tags related with events are identified.
Journal ArticleDOI

Spatial-Aware Hierarchical Collaborative Deep Learning for POI Recommendation

TL;DR: The extensive experimental analysis shows that the proposed Spatial-Aware Hierarchical Collaborative Deep Learning model outperforms the state-of-the-art recommendation models, especially in out- of-town and cold-start recommendation scenarios.
Proceedings ArticleDOI

Learning Representations of Ultrahigh-dimensional Data for Random Distance-based Outlier Detection

TL;DR: In this paper, a ranking model-based framework, called RAMODO, is proposed to learn low-dimensional representations that are tailored for a state-of-the-art outlier detection approach -the random distance-based approach.
Journal ArticleDOI

Dynamic User Modeling in Social Media Systems

TL;DR: To speed up the process of producing the top-k recommendations from large-scale social media data, an efficient query-processing technique is developed to support the proposed temporal context-aware recommender system (TCARS), and an item-weighting scheme is proposed to enable them to favor items that better represent topics related to user interests and topicsrelated to temporal context.