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    • ADCAIJ: Advances in Distributed Computing and Artificial Intelligence Journal
    • ADCAIJ - 2022
    • ADCAIJ, Vol.11, n.3
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    Título
    An Optimized Deep ConvNet Sentiment Classification Model with Word Embedding and BiLSTM Technique
    Autor(es)
    Ranjan, Roop
    A. K., Daniel
    Palabras clave
    Deep Learning
    Long Short Term Memory Networks
    Sentiment Classification
    Emotion Analysis
    FastText
    Fecha de publicación
    2023-01-24
    Editor
    Ediciones Universidad de Salamanca (España)
    Citación
    ADCAIJ: Advances in Distributed Computing and Artificial Intelligence Journal, 11 (2022)
    Resumen
    Sentiment Classification is a key area of natural language processing research that is frequently utilized in several industries. The goal of sentiment analysis is to figure out if a product or service received a negative or positive response. Sentiment analysis is widely utilized in several commercial fields to enhance the quality of services (QoS) for goods or services by gaining a better knowledge of consumer feedback. Deep learning provides cutting-edge achievements in a variety of complex fields. The goal of the study is to propose an improved approach for evaluating and categorising sentiments into different groups. This study proposes a novel hybridised model that combines the benefits of deep learning technologies Dual LSTM (Long Short Term Memory) and CNN (Convolution Neural Network) with the word embedding technique. The performance of three distinct word embedding approaches is compared in order to choose the optimal embedding for the proposed model's implementation. In addition, attention-based BiLSTM is used in a multi-convolutional approach. Standard measures were used to verify the validity of the suggested model's performance. The results show that the proposed model has a significantly enhanced accuracy of 96.56%, which is significantly better than existing models.
    URI
    https://hdl.handle.net/10366/151987
    ISSN
    2255-2863
    Aparece en las colecciones
    • ADCAIJ, Vol.11, n.3 [7]
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