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Concept Factorization With Adaptive Neighbors for Document Clustering.

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    We introduce CFANs, a novel concept factorization method that preserves data geometry. This approach effectively enhances document clustering performance on benchmark datasets.

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    Area of Science:

    • Machine Learning
    • Data Mining
    • Information Retrieval

    Background:

    • Concept Factorization (CF) is crucial for dimensionality reduction and feature extraction.
    • Existing graph-regularized CF methods struggle to simultaneously preserve data geometry and perform dimensionality reduction.
    • There is a need for advanced CF techniques that maintain the intrinsic neighborhood structure of data.

    Purpose of the Study:

    • To propose a novel concept factorization method, CF with adaptive neighbors (CFANs).
    • To integrate adaptive neighbors (ANs) regularization into CF decomposition to extract a representation space preserving geometrical neighborhood structure.
    • To develop an efficient algorithm for solving the proposed CFAN problem.

    Main Methods:

    • CFANs integrates an ANs regularization constraint into the CF decomposition process.
    • It simultaneously performs dimensionality reduction and learns a neighbor graph weights matrix.
    • An efficient algorithm is derived to solve the optimization problem.

    Main Results:

    • CFANs successfully extracts a representation space that maintains the geometrical neighborhood structure of the data.
    • The method was applied to document clustering on 20 Newsgroups, Reuters-21578, and TDT2 datasets.
    • Experimental results demonstrate the effectiveness of CFANs in document clustering tasks.

    Conclusions:

    • CFANs offers a novel and effective approach to concept factorization by preserving data geometry.
    • The simultaneous dimensionality reduction and neighbor graph learning is a key advancement.
    • The method shows significant promise for applications like document clustering.