Abstract

While efforts have been made on bridging the semantic gap in image understanding, the in situ understanding of social media images is arguably more important but has had less progress. In this work, we enrich the representation of images in image tweets by considering their social context. We argue that in the microblog context, traditional image features, e.g., low-level SIFT or high-level detected objects, are far from adequate in interpreting the necessary semantics latent in image tweets. To bridge this gap, we move from the images' pixels to their context and propose a context-aware image bf tweet modelling (CITING) framework to mine and fuse contextual text to model such social media images' semantics. We start with tweet's intrinsic contexts, namely, 1) text within the image itself and 2) its accompanying text; and then we turn to the extrinsic contexts: 3) the external web page linked to by the tweet's embedded URL, and 4) the Web as a whole. These contexts can be leveraged to benefit many fundamental applications. To demonstrate the effectiveness our framework, we focus on the task of personalized image tweet recommendation, developing a feature-aware matrix factorization framework that encodes the contexts as a part of user interest modelling. Extensive experiments on a large Twitter dataset show that our proposed method significantly improves performance. Finally, to spur future studies, we have released both the code of our recommendation model and our image tweet dataset.

Keywords

Computer scienceSocial mediaSemantic gapSemantics (computer science)Information retrievalContext (archaeology)Focus (optics)Bridging (networking)MicrobloggingImage (mathematics)Image retrievalScale-invariant feature transformArtificial intelligenceWorld Wide Web

Affiliated Institutions

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Publication Info

Year
2016
Type
article
Pages
1018-1027
Citations
86
Access
Closed

External Links

Social Impact

Social media, news, blog, policy document mentions

Citation Metrics

86
OpenAlex

Cite This

Tao Chen, Xiangnan He, Min‐Yen Kan (2016). Context-aware Image Tweet Modelling and Recommendation. , 1018-1027. https://doi.org/10.1145/2964284.2964291

Identifiers

DOI
10.1145/2964284.2964291