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Hybridizing Metric Learning and Case-Based Reasoning for adaptable clickbait detection

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Title:
Hybridizing Metric Learning and Case-Based Reasoning for adaptable clickbait detection.
Authors: 
López Sánchez, Daniel; Revuelta Herrero, Jorge; González Arrieta, Angélica; Corchado Rodríguez, Juan M.
Journal:
Applied Intelligence. pp. 1-16. Springer.

Publication date: 
29 December 2017
ISBN: 
0924-669X
DOI
 10.1007/s10489-017-1109-7

BibTex

@article { article,
title = {Hybridizing Metric Learning and Case-Based Reasoning for adaptable clickbait detection},
author = {López Sánchez, Daniel; Revuelta Herrero, Jorge; González Arrieta, Angélica; Corchado Rodríguez, Juan M.},
journal = {Applied Intelligence},
publisher = {Springer},
year = {2017}
}

XML

<article key='journals/Applied/López/29 December 2017' mdate='29 December 2017'>
<author> López Sánchez</author>
<author> Daniel; Revuelta Herrero</author>
<author> Jorge; González Arrieta</author>
<author> Angélica; Corchado Rodríguez</author>
<author> Juan M.</author>
<title> Hybridizing Metric Learning and Case-Based Reasoning for adaptable clickbait detection</title>
<pages> 1-16</pages>
<year> 2017</year>
<journal> Applied Intelligence</journal>
<ee> 10.1007/s10489-017-1109-7</ee>
</article>
Evidences of quality:
JCR(2016): 1.904
COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE: 63/133 (Q2)
The term clickbait is usually used to name web contents which are specifically designed to maximize advertisement monetization, often at the expense of quality and exactitude. The rapid proliferation of this type of content has motivated researchers to develop automatic detection methods, to effectively block clickbaits in different application domains. In this paper, we introduce a novel clickbait detection method. Our approach leverages state-of-the-art techniques from the fields of deep learning and metric learning, integrating them into the Case-Based Reasoning methodology. This provides the model with the ability to learn-over-time, adapting to different users’ criteria. Our experimental results also evidence that the proposed approach outperforms previous clickbait detection methods by a large margin. © 2017 Springer Science+Business Media, LLC, part of Springer Nature

 

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