Artificial Intelligence Based Predictive Analysis of Customer Churn

A. Jatain, S. B. Bajaj, Priyanka Vashisht, Ashima Narang
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引用次数: 1

Abstract

Deep learning has been evidenced to be a cutting-edge technology for big data scrutiny with a huge figure of effective cases in image processing, speech recognition, object detection, and so on. Lately, it has also been acquainted with in food science and business. In this paper, a fleeting overview of deep learning and detailly labelled the structure of some prevalent constructions of deep neural networks and the method for training a model is provided. Various techniques that used deep learning as the data analysis tool are analyzed to answer the complications and challenges in food sphere together with quality detection of fruits & vegetables. The precise difficulties, the datasets, the pre-processing approaches, the networks and frameworks used, the performance attained, and the evaluation with other prevalent explanations of each research are examined. We also analyzed the potential of deep learning to be used as a cutting-edge data mining tool in food sensory and consume explores. The outcome of our review specifies that deep learning outclasses other approaches such as physical feature extractors, orthodox machine learning algorithms, and deep learning as a capable tool in food quality and safety inspection. The cheering outcomes in classification and regression problems attained by deep learning will fascinate more research exertions to apply deep learning into the arena of food in the forthcoming. The main aim of this work is to facilitate our learning and implement that in real life. Food quality and food security are always issues which are always overlooked. In modern times, this has morphed into more significant concerns relating to optimization of on- demand supply chains and profitability of agri-businesses. But now with the advanced systems and technology, it is possible to resolve this issue efficiently using the power of AI.
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基于人工智能的客户流失预测分析
深度学习已经被证明是大数据审查的一项前沿技术,在图像处理、语音识别、目标检测等领域都有大量有效的案例。最近,它在食品科学和商业方面也很熟悉。本文简要概述了深度学习,并详细标记了一些流行的深度神经网络结构和训练模型的方法。分析了使用深度学习作为数据分析工具的各种技术,以回答食品领域的复杂性和挑战,以及水果和蔬菜的质量检测。具体的难点、数据集、预处理方法、使用的网络和框架、达到的性能,以及对每个研究的其他流行解释的评估进行了检查。我们还分析了深度学习在食物感官和消费探索中作为前沿数据挖掘工具的潜力。我们回顾的结果表明,深度学习优于其他方法,如物理特征提取器、传统机器学习算法和深度学习,是食品质量和安全检查的有力工具。深度学习在分类和回归问题上取得的令人振奋的成果,将在未来吸引更多的研究工作,将深度学习应用于食品领域。这项工作的主要目的是促进我们的学习,并在现实生活中实施。食品质量和食品安全一直是人们忽视的问题。在现代,这已经演变成与按需供应链的优化和农业企业的盈利能力有关的更重要的关注。但是现在有了先进的系统和技术,利用人工智能的力量可以有效地解决这个问题。
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