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Readers’ affect: predicting and understanding readers’ emotions with deep learning

Readers’ affect: predicting and understanding readers’ emotions with deep learning
Readers’ affect: predicting and understanding readers’ emotions with deep learning
Emotions are highly useful to model human behavior being at the core of what makes us human. Today, people abundantly express and share emotions through social media. Technological advancements in such platforms enable sharing opinions or expressing any specific emotions towards what others have shared, mainly in the form of textual data. This entails an interesting arena for analysis; as to whether there is a disconnect between the writer’s intended emotion and the reader’s perception of textual content. In this paper, we present experiments for Readers’ Emotion Detection through multi-target regression settings by exploring a Bi-LSTM-based Attention model, where our major intention is to analyze the interpretability and effectiveness of the deep learning model for the task. To conduct experiments, we procure two extensive datasets REN-10k and RENh-4k, apart from using a popular benchmark dataset from SemEval-2007. We perform a two-phase experimental evaluation, first being various coarse-grained and fine-grained evaluations of our model performance in comparison with several baselines belonging to different categories of emotion detection, viz., deep learning, lexicon based, and classical machine learning. Secondly, we evaluate model behavior towards readers’ emotion detection assessing attention maps generated by the model through devising a novel set of qualitative and quantitative metrics. The first phase of experiments shows that our Bi-LSTM + Attention model significantly outperforms all baselines. The second analysis reveals that emotions may be correlated to specific words as well as named entities.
Readers' emotion detection, Affective computing, Textual emotion detection, Deep learning
2196-1115
Anoop, K.
9cc17e26-a329-49fe-b73b-2fce75084966
Deepak, P.
80ebb63c-91a6-4500-8e03-9d806262049d
Sam Abraham, Savitha
615cca2d-7df1-416d-9048-03749ecfa73e
Lajish, V.L.
034cc3e6-c98a-4e9c-ab30-4729948b55c2
P. Gangan, Manjary
f1f79b4a-2662-4f0c-ad33-dbb0cbf2512b
Anoop, K.
9cc17e26-a329-49fe-b73b-2fce75084966
Deepak, P.
80ebb63c-91a6-4500-8e03-9d806262049d
Sam Abraham, Savitha
615cca2d-7df1-416d-9048-03749ecfa73e
Lajish, V.L.
034cc3e6-c98a-4e9c-ab30-4729948b55c2
P. Gangan, Manjary
f1f79b4a-2662-4f0c-ad33-dbb0cbf2512b

Anoop, K., Deepak, P., Sam Abraham, Savitha, Lajish, V.L. and P. Gangan, Manjary (2022) Readers’ affect: predicting and understanding readers’ emotions with deep learning. Journal of Big Data, 9, [82]. (doi:10.1186/s40537-022-00614-2).

Record type: Article

Abstract

Emotions are highly useful to model human behavior being at the core of what makes us human. Today, people abundantly express and share emotions through social media. Technological advancements in such platforms enable sharing opinions or expressing any specific emotions towards what others have shared, mainly in the form of textual data. This entails an interesting arena for analysis; as to whether there is a disconnect between the writer’s intended emotion and the reader’s perception of textual content. In this paper, we present experiments for Readers’ Emotion Detection through multi-target regression settings by exploring a Bi-LSTM-based Attention model, where our major intention is to analyze the interpretability and effectiveness of the deep learning model for the task. To conduct experiments, we procure two extensive datasets REN-10k and RENh-4k, apart from using a popular benchmark dataset from SemEval-2007. We perform a two-phase experimental evaluation, first being various coarse-grained and fine-grained evaluations of our model performance in comparison with several baselines belonging to different categories of emotion detection, viz., deep learning, lexicon based, and classical machine learning. Secondly, we evaluate model behavior towards readers’ emotion detection assessing attention maps generated by the model through devising a novel set of qualitative and quantitative metrics. The first phase of experiments shows that our Bi-LSTM + Attention model significantly outperforms all baselines. The second analysis reveals that emotions may be correlated to specific words as well as named entities.

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Accepted/In Press date: 11 April 2022
Published date: 20 June 2022
Keywords: Readers' emotion detection, Affective computing, Textual emotion detection, Deep learning

Identifiers

Local EPrints ID: 495958
URI: http://eprints.soton.ac.uk/id/eprint/495958
ISSN: 2196-1115
PURE UUID: 4d05de8f-b8e3-4a65-ada9-3e966aa5afa1
ORCID for K. Anoop: ORCID iD orcid.org/0000-0002-4335-5544

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Date deposited: 28 Nov 2024 17:32
Last modified: 30 Nov 2024 03:16

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Contributors

Author: K. Anoop ORCID iD
Author: P. Deepak
Author: Savitha Sam Abraham
Author: V.L. Lajish
Author: Manjary P. Gangan

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