基于CNN的LSTM的遗传优化讽刺语检测

Darkunde Mayur Ashok, Agrawal Nidhi Ghanshyam, S. Salim, Dungarpur Burhanuddin Mazahir, B. Thakare
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引用次数: 5

摘要

21世纪最具挑战性的问题是如何从大量的生动数据中发现讽刺。经过20多年的研究,过去10年不仅在语义特征方面取得了重大进展,而且在分析和处理数据的各种机器学习方法方面也出现了上升趋势。举几个讽刺的理论,它的句法和语义特性;词汇特性一直是几乎所有人都感兴趣的领域。在本文中,我们提出了一种独特的深度神经网络模型,该模型的双向LSTM采用遗传算法进行超参数优化,然后使用卷积神经网络进行讽刺检测。我们以一种稳健的方式提出了结果,这可能会为该领域未来的工作带来更好的结果。
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Sarcasm Detection using Genetic Optimization on LSTM with CNN
The challenging problem of 21st Century is to detect sarcasm in vivid data available on a large scale. Over 20 years of study in this field, the past 10 years have shown a significant progress not only in semantic features, but also an upward trend has also been observed in the various machine-learning approaches to analyze and process the data. To enlist a few, theories of sarcasm, it's syntactical and semantic properties; lexical features have been an area of interest for almost all of them. In this paper, we propose a unique deep neural network model whose Bidirectional LSTM undergo Hyper parameters optimization using genetic algorithm followed by a Convolution Neural Network for sarcasm detection. We put forward the results in a robust way, which may result in a better future work in this field.
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