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Issue Date
Title
Author(s)
2022
Sarcasm Detection in News Headlines using Supervised Learning Publisher: IEEE PDF
Mitra, Satanik
2022
Suicidal Intention Detection in Tweets Using BERT-Based Transformers
Mitra, Satanik
2020-03
In recent times, word embeddings are taking a significant role in sentiment analysis. As the generation of word embeddings needs huge corpora, many applications use pretrained embeddings. In spite of the success, word embeddings suffers from certain drawbacks such as it does not capture sentiment information of a word, contextual information in terms of parts of speech tags and domain-specific information. In this work we propose HIDE a Hybrid Improved Document level Embedding which incorporates domain information, parts of speech information and sentiment information into existing word embeddings such as GloVe and Word2Vec. It combine improved word embeddings into document level embeddings. Further, Latent Semantic Analysis (LSA) has been used to represent documents as a vectors. HIDE is generated, combining LSA and document level embeddings, which is computed from improved word embeddings. We test HIDE with six different datasets and shown considerable improvement over the accuracy of existing pretrained word vectors such as GloVe and Word2Vec. We further compare our work with two existing document level sentiment analysis approaches. HIDE performs better than existing systems
Mitra, Satanik
2018
SentiCon: A Concept Based Feature Set for Sentiment Analysis
Mitra, Satanik
2021-05
Helpfulness of online consumer reviews: A multi-perspective approach
Mitra, Satanik
2021-01
An Approach to Identify Provocative and Problematic Content with Social Nociceptor
Mitra, Satanik
2020-06
Hybrid Improved Document-level Embedding (HIDE)
Mitra, Satanik
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Author
53
Bhat, Anil Kumar
53
Chanda, Udayan
52
Sharma, Satyendra Kumar
25
Tikoria, Jyoti
24
Nagpal, Gaurav
23
Goyal, Praveen
21
Naim, Mohammad Faraz
20
Matai, Rajesh
19
Yadav, Neetu
16
Nigam, Achint
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Subject
13
India
13
Innovation diffusion
10
Social Media
9
E-Commerce
9
Marketing
9
Supply Chain
8
EOQ Model
8
Literature review
7
Business excellence
7
Gen Y
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