A Multi-channel Convolutional Neural Network for Multilabel Sentiment Classification Using Abilify Oral User Reviews

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Abstract

Nowadays, patients and caregivers have become very active in social media. They are sharing a lot of information about their medication and drugs in terms of posts or comments. Therefore, sentiment analysis plays an active role to compute those posts or comments. However, each post is associated with multilabel such as ease of use, effectiveness, and satisfaction. To solve this kind of problem, we propose a multichannel convolution neural network for multilabel sentiment classification using Abilify oral user comments. The multichannel represents the multiple versions of the standard model with different strides. Specifically, we use the pre-trained model to generate word vectors. The proposed model is evaluated with multilabel metrics. The results indicate that the proposed multichannel convolutional network model outperforms the traditional machine learning algorithms.

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APA

Trueman, T. E., Jayaraman, A. K., Jasmine, S., Ananthakrishnan, G., & Narayanasamy, P. (2023). A Multi-channel Convolutional Neural Network for Multilabel Sentiment Classification Using Abilify Oral User Reviews. Informatica (Slovenia), 47(1), 109–114. https://doi.org/10.31449/inf.v47i1.3510

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