Abstractive Text Summarization Using Attentive GRU Based Encoder-Decoder

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Abstract

In the current era, a huge volume of information exists everywhere. Therefore, it is very crucial to evaluate that information and extract useful, and often summarized information out of it so that it may be used for relevant purposes. This extraction can be achieved through a powerful technique of artificial intelligence, namely, machine learning. Indeed, automatic text summarization has emerged as an important application of machine learning in text processing. In this paper, an english text summarizer has been built with GRU-based encoder and decoder. Bahdanau attention mechanism has been added to overcome the problem of handling long sequences in the input text. A news-summary dataset has been used to train the model. The output is observed to outperform competitive models in the literature. The generated summary can be used as a newspaper headline.

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Rehman, T., Das, S., Sanyal, D. K., & Chattopadhyay, S. (2022). Abstractive Text Summarization Using Attentive GRU Based Encoder-Decoder. In Lecture Notes in Electrical Engineering (Vol. 925, pp. 687–695). Springer Science and Business Media Deutschland GmbH. https://doi.org/10.1007/978-981-19-4831-2_56

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