المفاهيم الأساسية
DiffRed introduces a novel approach to dimensionality reduction guided by stable rank, achieving tighter bounds on M1 and Stress metrics. The algorithm leverages stable rank to optimize the target dimensions for reduced distortion.
الملخص
DiffRed proposes a new dimensionality reduction technique that combines Principal Components with Gaussian random maps to achieve lower M1 and Stress metrics compared to traditional methods like PCA and Random Maps. The algorithm is guided by the stable rank of the data matrix, ensuring efficient mapping to lower dimensions while preserving structure and variance. Experimental results demonstrate the effectiveness of DiffRed across various real-world datasets, showcasing significant improvements in distortion metrics. By incorporating stable rank into the optimization process, DiffRed offers a promising solution for high-dimensional data processing tasks.
الإحصائيات
We rigorously prove that DiffRed achieves a general upper bound of O(1−p√k2) on Stress.
Our extensive experiments demonstrate that DiffRed achieves near zero M1 and much lower values of Stress compared to other techniques.
DiffRed can map a 6 million dimensional dataset to 10 dimensions with 54% lower Stress than PCA.
اقتباسات
"In this work, we propose a novel dimensional-
ity reduction technique, DiffRed, which first
projects the data matrix, A, along first k1
principal components..." - Prarabdh Shukla et al.
"Our contributions in this paper are as follows: We develop a new dimensionality reduction algo-
rithm, DiffRed that combines Principal Compo-
nents with Gaussian random maps in a novel way..." - Prarabdh Shukla et al.