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Matematicheskie Zametki, 2022, Volume 112, Issue 2, paper published in the English version journal
(Mi mzm13673)
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Papers published in the English version of the journal
How Can We Identify the Sparsity Structure Pattern
of High-Dimensional Data: an Elementary Statistical Analysis
to Interpretable Machine Learning
K. L. Luab a Jiangsu Automation Research Institute, Shanghai, 201210 China
b School of Urban Railway Transportation, Shanghai University of Engineering Science, Shanghai, 201620 China
Abstract:
Machine learning is a key tool to identify low-dimensional structure patterns in
high-dimensional data in the current “Big Data” era.
Taking linear regression and
supervised binary classification for simplicity as study cases, we present a whole
statistical analysis framework and procedure from formulation to computation, which aims
to provide an elementary introduction to interpretable machine learning methods or
algorithms, e.g., Lasso and its variants, SVM, etc.
Meanwhile, the optimality, risk
bounds, and complexity of these sparsity structure pattern recognition algorithms have
been precisely characterized through proved theorems or corollaries.
And the limitations
of these algorithms and why we need deep learning are realized.
Keywords:
high-dimensional data, sparsity structure, pattern recognition, statistical analysis,
interpretable machine learning.
Received: 22.01.2022
Citation:
K. L. Lu, “How Can We Identify the Sparsity Structure Pattern
of High-Dimensional Data: an Elementary Statistical Analysis
to Interpretable Machine Learning”, Math. Notes, 112:2 (2022), 223–238
Linking options:
https://www.mathnet.ru/eng/mzm13673
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Statistics & downloads: |
Abstract page: | 78 |
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