Multimodal sentiment analysis: a survey of methods, trends, and challenges
Sentiment analysis has come long way since it was introduced as a natural language
processing task nearly 20 years ago. Sentiment analysis aims to extract the underlying …
processing task nearly 20 years ago. Sentiment analysis aims to extract the underlying …
Deep learning and multilingual sentiment analysis on social media data: An overview
Twenty-four studies on twenty-three distinct languages and eleven social media illustrate the
steady interest in deep learning approaches for multilingual sentiment analysis of social …
steady interest in deep learning approaches for multilingual sentiment analysis of social …
Machine learning and deep learning for sentiment analysis across languages: A survey
The inception and rapid growth of the Web, social media, and other online forums have
resulted in the continuous and rapid generation of opinionated textual data. Several real …
resulted in the continuous and rapid generation of opinionated textual data. Several real …
[HTML][HTML] Offensive, aggressive, and hate speech analysis: From data-centric to human-centered approach
Abstract Analysis of subjective texts like offensive content or hate speech is a great
challenge, especially regarding annotation process. Most of current annotation procedures …
challenge, especially regarding annotation process. Most of current annotation procedures …
Zero-shot emotion detection for semi-supervised sentiment analysis using sentence transformers and ensemble learning
SG Tesfagergish, J Kapočiūtė-Dzikienė… - Applied Sciences, 2022 - mdpi.com
We live in a digitized era where our daily life depends on using online resources.
Businesses consider the opinions of their customers, while people rely on the …
Businesses consider the opinions of their customers, while people rely on the …
[HTML][HTML] Visual sentiment analysis using deep learning models with social media data
Analyzing the sentiments of people from social media content through text, speech, and
images is becoming vital in a variety of applications. Many existing research studies on …
images is becoming vital in a variety of applications. Many existing research studies on …
Personal bias in prediction of emotions elicited by textual opinions
Abstract Analysis of emotions elicited by opinions, comments, or articles commonly exploits
annotated corpora, in which the labels assigned to documents average the views of all …
annotated corpora, in which the labels assigned to documents average the views of all …
Neuro-symbolic models for sentiment analysis
We propose and test multiple neuro-symbolic methods for sentiment analysis. They combine
deep neural networks–transformers and recurrent neural networks–with external knowledge …
deep neural networks–transformers and recurrent neural networks–with external knowledge …
A Systematic Review of Cross-Lingual Sentiment Analysis: Tasks, Strategies, and Prospects
C Zhao, M Wu, X Yang, W Zhang, S Zhang… - ACM Computing …, 2024 - dl.acm.org
Traditional methods for sentiment analysis, when applied in a monolingual context, often
yield less than optimal results in multilingual settings. This underscores the need for a more …
yield less than optimal results in multilingual settings. This underscores the need for a more …
PALS: Personalized Active Learning for Subjective Tasks in NLP
For subjective NLP problems, such as classification of hate speech, aggression, or
emotions, personalized solutions can be exploited. Then, the learned models infer about the …
emotions, personalized solutions can be exploited. Then, the learned models infer about the …