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Journal ArticleDOI

Multimodal sentimental analysis for social media applications: A comprehensive review

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TLDR
This work aims to present a survey of recent developments in analyzing the multimodal sentiments (involving text, audio, and video/image) which involve human–machine interaction and challenges involved in analyzing them.
Abstract
The analysis of sentiments is essential in identifying and classifying opinions regarding a source material that is, a product or service. The analysis of these sentiments finds a variety of applications like product reviews, opinion polls, movie reviews on YouTube, news video analysis, and health care applications including stress and depression analysis. The traditional approach of sentiment analysis which is based on text involves the collection of large textual data and different algorithms to extract the sentiment information from it. But multimodal sentimental analysis provides methods to carry out opinion analysis based on the combination of video, audio, and text which goes a way beyond the conventional text‐based sentimental analysis in understanding human behaviors. The remarkable increase in the use of social media provides a large collection of multimodal data that reflects the user's sentiment on certain aspects. This multimodal sentimental analysis approach helps in classifying the polarity (positive, negative, and neutral) of the individual sentiments. Our work aims to present a survey of recent developments in analyzing the multimodal sentiments (involving text, audio, and video/image) which involve human–machine interaction and challenges involved in analyzing them. A detailed survey on sentimental dataset, feature extraction algorithms, data fusion methods, and efficiency of different classification techniques are presented in this work.

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References
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Journal ArticleDOI

Towards an intelligent framework for multimodal affective data analysis

TL;DR: A novel multimodal information extraction agent is proposed, which infers and aggregates the semantic and affective information associated with user-generated multi-modal data in contexts such as e-learning, e-health, automatic video content tagging and human-computer interaction.
Journal ArticleDOI

Convolutional Recurrent Deep Learning Model for Sentence Classification

TL;DR: This paper uses an unsupervised neural language model to train initial word embeddings that are further tuned by the authors' deep learning network, then, the pre-trained parameters of the network are used to initialize the model and a joint CNN and RNN framework is described to overcome the problem of loss of detailed, local information.
Proceedings ArticleDOI

Multimodal sentiment analysis with word-level fusion and reinforcement learning

TL;DR: This paper proposed the Gated Multimodal Embedding LSTM with Temporal Attention (GME-LSTM(A)) model that is composed of two modules.
Journal ArticleDOI

Sentiment Analysis of Review Datasets Using Naive Bayes and K-NN Classifier

TL;DR: The paper elaborately discusses two supervised machine learning algorithms: K-Nearest Neighbour(K-NN) and Naive Bayes and compares their overall accuracy, precisions as well as recall values and it was seen that in case of movie reviews Naïve Bayes gave far better results than K-NN but for hotel reviews these algorithms gave lesser, almost same accuracies.
Journal ArticleDOI

Sentiment analysis using common-sense and context information

TL;DR: A novel sentiment analysis model based on common-sense knowledge extracted from ConceptNet based ontology and context information is proposed which shows the effectiveness of the proposed methods.
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How does sentiment analysis on social media influence consumer purchase patterns?

The provided paper does not specifically discuss how sentiment analysis on social media influences consumer purchase patterns.