| Literature DB >> 35909834 |
Rongqing Zhang1,2,3, Zhenzhu Xi1,2,3.
Abstract
This paper firstly introduces the background of the research on neural network and anomaly identification screening and mineralization prediction under semisupervised learning, then introduces supervised learning, semisupervised learning, unsupervised learning, and reinforcement learning, analyzes and compares their advantages and disadvantages, and concludes that unsupervised learning is the best way to process the data. In the research method, this paper classifies the obtained geochemical data by using semisupervised learning and then trains the obtained samples using the convolutional neural network model to obtain the mineralization prediction model and check its correctness, which finally provides the direction for the subsequent mineralization prediction research.Entities:
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Year: 2022 PMID: 35909834 PMCID: PMC9334094 DOI: 10.1155/2022/8745036
Source DB: PubMed Journal: Comput Intell Neurosci
Figure 1Flowchart of supervised learning.
Figure 2Flowchart of supervised learning applied to classification prediction.
Figure 3Semisupervised learning on classifier.
Figure 4Basic neuron model.
Figure 5Image of the function of ReLU function.
Figure 6Basic structure of a convolutional neural network.
Figure 7Accuracy of the training of the convolutional neural network mineralization prediction model for Pb elements in the Bajiazi mining area in Inner Mongolia.