机器学习、深度学习与地质领域的实现语言

Yongzhang Zhou, Jun Wang, R. Zuo, Fan Xiao, W. Shen, Shugong Wang
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引用次数: 1

摘要

地质大数据呈指数级增长。只有开发出智能的数据处理方法,我们才能赶上大数据的非凡增长。机器学习是人工智能的核心,也是实现计算机智能化的根本途径。机器学习已成为地质大数据研究的前沿热点。它将使地质大数据腾飞,改变地质。机器学习是从数据中导出模型的训练过程,它最终给出了面向某一性能度量的决策。深度学习是机器学习研究的一个重要子类。它通过构建具有许多隐藏层和大量训练数据的机器学习模型来学习更多有用的特征,从而最终提高分类或预测的准确性。卷积神经网络算法是最常用的深度学习算法之一。它被广泛应用于图像识别和语音分析。Python语言在科学领域发挥着越来越重要的作用。Scikit Learn是一家与机器学习相关的银行,提供数据预处理、分类、回归、聚类、预测和模型分析等算法。Keras是一个基于Theano/Tensorflow的深度学习库,可用于构建简单的人工神经网络。
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Machine Learning, Deep Learning and Implementation Language in Geological Field
Geological big data is growing exponentially. Only by developing intelligent data processing methods can we catch up with the extraordinary growth of big data. Machine learning is the core of artificial intelligence and the fundamental way to make computers intelligent. Machine learning has become the frontier hotspot of geological big data research. It will make geological big data winged and change geology. Machine learning is a training process of model derived from data, and it eventually gives a decision oriented to a certain performance measurement. Deep learning is an important subclass of machine learning research. It learns more useful features by building machine learning models with many hidden layers and massive training data, so as to improve the accuracy of classification or prediction at last. Convolutional neural network algorithm is one of the most commonly used deep learning algorithms. It is widely used in image recognition and speech analysis. Python language plays an increasingly important role in the field of science. Scikit-Learn is a bank related to machine learning, which provides algorithms such as data preprocessing, classification, regression, clustering, prediction and model analysis. Keras is a deep learning bank based on Theano/Tensorflow, which can be applied to build a simple artificial neural network.
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