Jey Han Lau, Alexander Clark, et al.
Cognitive Science
Topics generated by topic models are typically presented as a list of topic terms. Automatic topic labelling is the task of generating a succinct label that summarises the theme or subject of a topic, with the intention of reducing the cognitive load of end-users when interpreting these topics. Traditionally, topic label systems focus on a single label modality, e.g. textual labels. In this work we propose a multimodal approach to topic labelling using a simple feedforward neural network. Given a topic and a candidate image or textual label, our method automatically generates a rating for the label, relative to the topic. Experiments show that this multimodal approach outperforms single-modality topic labelling systems.
Jey Han Lau, Alexander Clark, et al.
Cognitive Science
Khoi Nguyen Tran, Jey Han Lau, et al.
EDM 2018
Gabriel Stanovsky, Daniel Gruhl, et al.
EACL 2017
Jean-Philippe Bernardy, Shalom Lappin, et al.
ACL 2018