基于TenzorFlow库的感知器深度学习算法实现

Arshiya Begum, Farheen Fatima, Asfia Sabahath
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引用次数: 10

摘要

近年来,深度学习、机器学习和人工智能是数据科学中备受关注的概念。深度学习在计算机视觉、语音和音频处理、自然语言处理等领域取得了成功。它具有较强的学习能力,与传统的机器学习算法相比,可以提高数据集对特征提取的利用率。感知器是创建深度神经网络的基本组成部分。感知机模型是更通用的计算模型。它分析无监督的数据,使其成为一个有价值的数据分析工具。本文的一个关键任务是开发和分析学习算法。它从使用感知器的深度学习开始,以及如何使用TensorFlow应用它来解决各种问题。本文的主要工作是使感知器学习算法在不可分离的训练数据集上表现良好。这种类型的算法适用于机器学习、深度学习、模式识别和连接专家系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Implementation of Deep Learning Algorithm with Perceptron using TenzorFlow Library
In recent years, Deep Learning, Machine Learning, and Artificial Intelligence are highly focused concepts of data science. Deep learning has achieved success in the field of Computer Vision, Speech and Audio Processing, and Natural Language Processing. It has the strong learning ability that can improve utilization of datasets for the feature extraction compared to traditional Machine Learning Algorithm. Perceptron is the essential building block for creating a deep Neural Network. The perceptron model is the more general computational model. It analyzes the unsupervised data, making it a valuable tool for data analytics. A key task of this paper is to develop and analyze learning algorithm. It begins with deep learning with perceptron and how to apply it using TensorFlow to solve various issues. The main part of this paper is to make perceptron learning algorithm well behaved with non-separable training datasets. This type of algorithm is suitable for Machine Learning, Deep Learning, Pattern Recognition, and Connectionist Expert System.
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