Comparative analysis for augmented decision-making applications using deep learning models

Q4 Multidisciplinary
P. Durga, S. Karthikeyan
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引用次数: 0

Abstract

Now a days decision-making plays a significant role in various applications and several research. For applications such as diseases, intelligent routing systems, and online shopping carts such as e-commerce sites, recommended systems are developed based on sentiment analysis (SA) and take accurate decision-making based on the predictions and analyze the accurate decisions based on the result analysis. When it comes to practical uses, deep learning (DL) has by far been the most popular. DL becomes an indispensable domain for several tasks in science and engineering. It is very difficult to take decisions based on traditional tests in various research areas such as disease prediction, textual sentiment analysis, and risk prediction of autonomous vehicles due to the lack of accuracy and long time for results. To address this, various approaches are proposed to adopt. Decision-making is based on multi-criticism, which is more useful to solve critical issues in making accurate decisions than previous approaches. In this paper, an improved and augmented decision-making deep learning algorithm is discussed and shows the comparison among the various DL algorithms. The performance is calculated according to the parameters.
使用深度学习模型的增强决策应用的比较分析
如今,决策在各种应用和研究中发挥着重要作用。对于疾病、智能路由系统、电子商务网站等在线购物车等应用,基于情感分析(SA)开发推荐系统,根据预测做出准确的决策,并根据结果分析分析准确的决策。当涉及到实际应用时,深度学习(DL)迄今为止是最受欢迎的。在科学和工程的许多任务中,深度学习已经成为一个不可或缺的领域。在疾病预测、文本情感分析、自动驾驶汽车风险预测等多个研究领域,由于准确性低、结果等待时间长,传统的测试方法很难做出决定。为了解决这个问题,建议采取各种方法。决策是基于多重批评的,它比以往的方法更有助于解决关键问题,做出准确的决策。本文讨论了一种改进和增强的决策深度学习算法,并对各种算法进行了比较。根据这些参数计算性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Journal of Current Science and Technology
Journal of Current Science and Technology Multidisciplinary-Multidisciplinary
CiteScore
0.80
自引率
0.00%
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0
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