Weakly supervised collective feature learning from curated media
Yusuke Mukuta, Akisato Kimura, David B Adrian, Zoubin Ghahramani

TL;DR
This paper introduces a new weakly supervised feature learning method leveraging human-curated groups from social media, enabling discriminative feature extraction without extensive manual labeling.
Contribution
It proposes a novel framework that uses human curation as weak labels and formulates feature learning as a link prediction problem in bipartite graphs.
Findings
Effective feature learning from curated social media groups.
Outperforms traditional weak supervision methods.
Framework applicable to large-scale social media data.
Abstract
The current state-of-the-art in feature learning relies on the supervised learning of large-scale datasets consisting of target content items and their respective category labels. However, constructing such large-scale fully-labeled datasets generally requires painstaking manual effort. One possible solution to this problem is to employ community contributed text tags as weak labels, however, the concepts underlying a single text tag strongly depends on the users. We instead present a new paradigm for learning discriminative features by making full use of the human curation process on social networking services (SNSs). During the process of content curation, SNS users collect content items manually from various sources and group them by context, all for their own benefit. Due to the nature of this process, we can assume that (1) content items in the same group share the same semantic…
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Taxonomy
TopicsAdvanced Graph Neural Networks · Complex Network Analysis Techniques · Text and Document Classification Technologies
