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Interpretable Semisupervised Classification Method Under Multiple Smoothness Assumptions With Application to Lithology Identification

机译:岩性识别应用于多种平滑假设下的可解释的半植入分类方法

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摘要

In this letter, considering the lack of core and drilling cuttings, an interpretable semisupervised classification method (ISSCM) under multiple smoothness assumptions is proposed and applied to lithology identification. The contribution is threefold. First, the novel semisupervised learning algorithm is developed based on the decision tree, the interpretability of which is highly beneficial to solve risk-aware problems. Second, both smoothness in the feature space and depth is utilized to generate pseudo-labels for the unlabelled data by using label propagation. Third, an algorithm to approximate the optimal affinity matrix is added to avoid degradation rendered by inappropriate manual settings under multiple smoothness assumptions. All these contributions could yield a classification model that is interpretable, accurate, and insusceptible to imprecise empirical settings. In the experiment, the proposed method is applied to lithology identification and verified by real-world data.
机译:在这封信中,考虑到缺乏核心和钻孔切割,提出了一种可解释的半培育分类方法(ISSCM),并应用于岩性识别。贡献是三倍。首先,基于决策树开发了新颖的半体验学习算法,其可解释性是解决风险感知问题的高度有益。其次,利用特征空间和深度的光滑度来利用通过使用标签传播来为未标记数据生成伪标签。第三,添加近似最佳亲和矩阵的算法以避免在多个平滑度假设下不适当的手动设置呈现的劣化。所有这些贡献都可以产生一种可解释,准确,并且无法对实证设置进行解释,准确和无疑的分类模型。在实验中,所提出的方法应用于岩性识别并通过现实数据验证。

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