TY - GEN
T1 - Exploring Deep Learning Models for Analysis of Audience Sentiments in Movie Reviews
AU - Bhat, Vijayalakshmi
AU - Sumith, N.
N1 - Publisher Copyright:
© The Author(s), under exclusive license to Springer Nature Singapore Pte Ltd. 2026.
PY - 2026
Y1 - 2026
N2 - Applications that generate valuable sentiment-rich data, such as movie reviews, social media monitoring, and customer feedback evaluation, depend heavily on sentiment analysis. However, because sentiment is contextual and subtle, it can be difficult to convey successfully in writing and frequently necessitates an awareness of long-term word relationships. Because they can process sequential input, recurrent neural network (RNN) types like LSTM and GRU are frequently utilized for such tasks. In this work, we assess how well LSTMs and GRUs execute sentiment analysis, particularly when applied to movie reviews. According to the results, LSTMs perform better than GRUs at managing long-term dependencies, which makes them more appropriate for jobs where a sentence’s sentiment depends on a comprehension of word relationships across the text. When important contextual information was dispersed over lengthy sequences or when complicated sentence structures were involved, LSTMs showed improved accuracy. Although GRUs are quicker to train and more computationally efficient, their simplicity makes it difficult for them to accurately grasp long-range dependencies. These findings provide important information for future NLP model selection and optimization, showing that LSTMs are more resilient for sentiment analysis tasks requiring greater contextual awareness, even while GRUs may be preferable in settings that prioritize computing speed.
AB - Applications that generate valuable sentiment-rich data, such as movie reviews, social media monitoring, and customer feedback evaluation, depend heavily on sentiment analysis. However, because sentiment is contextual and subtle, it can be difficult to convey successfully in writing and frequently necessitates an awareness of long-term word relationships. Because they can process sequential input, recurrent neural network (RNN) types like LSTM and GRU are frequently utilized for such tasks. In this work, we assess how well LSTMs and GRUs execute sentiment analysis, particularly when applied to movie reviews. According to the results, LSTMs perform better than GRUs at managing long-term dependencies, which makes them more appropriate for jobs where a sentence’s sentiment depends on a comprehension of word relationships across the text. When important contextual information was dispersed over lengthy sequences or when complicated sentence structures were involved, LSTMs showed improved accuracy. Although GRUs are quicker to train and more computationally efficient, their simplicity makes it difficult for them to accurately grasp long-range dependencies. These findings provide important information for future NLP model selection and optimization, showing that LSTMs are more resilient for sentiment analysis tasks requiring greater contextual awareness, even while GRUs may be preferable in settings that prioritize computing speed.
UR - https://www.scopus.com/pages/publications/105028271931
UR - https://www.scopus.com/pages/publications/105028271931#tab=citedBy
U2 - 10.1007/978-981-96-8898-2_6
DO - 10.1007/978-981-96-8898-2_6
M3 - Conference contribution
AN - SCOPUS:105028271931
SN - 9789819688975
T3 - Lecture Notes in Networks and Systems
SP - 67
EP - 77
BT - ICT for Intelligent Systems - Proceedings of ICTIS 2025
A2 - Choudrie, Jyoti
A2 - Mahalle, Parikshit N.
A2 - Perumal, Thinagaran
A2 - Joshi, Amit
PB - Springer Science and Business Media Deutschland GmbH
T2 - 9th International Conference on Information and Communication Technology for Intelligent Systems, ICTIS 2025
Y2 - 4 April 2025 through 6 April 2025
ER -