2023
DOI: 10.1007/s11042-023-16891-9
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Improved ensemble based deep learning approach for sarcastic opinion classification

S. Uma Maheswari,
S. S. Dhenakaran
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Cited by 2 publications
(2 citation statements)
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“…A new method using agglomerative clustering for outlier detection and a stacked autoencoder with ensemble classification algorithms was developed to detect sarcastic tweets and reviews. This technique outperformed other algorithms in sarcasm prediction and sentiment identification with 99.3% accuracy [53]. With 1.5 million Amazon and Yelp reviews, a study introduced the ʹAmazon and Yelp Reviewsʹ dataset for sentiment analysis.…”
Section: Sentiment Analysis and Opinion Miningmentioning
confidence: 99%
See 1 more Smart Citation
“…A new method using agglomerative clustering for outlier detection and a stacked autoencoder with ensemble classification algorithms was developed to detect sarcastic tweets and reviews. This technique outperformed other algorithms in sarcasm prediction and sentiment identification with 99.3% accuracy [53]. With 1.5 million Amazon and Yelp reviews, a study introduced the ʹAmazon and Yelp Reviewsʹ dataset for sentiment analysis.…”
Section: Sentiment Analysis and Opinion Miningmentioning
confidence: 99%
“…Sarcasm and irony are difficult to recognize and grasp, even using sentiment classification methods. Researchers in [53] introduces a method for spotting sarcastic thoughts in online communication, emphasizing the necessity for novel methods to capture subtle language subtleties. [128] employs character language model classifiers to identify irony in social media and e-commerce communications.…”
Section: Dealing With Sarcasm and Ironymentioning
confidence: 99%