研究目的
To address the limitations of the original MCA, including sensitivity to outliers, inability to handle nonlinearities in datasets, and high computational complexity, by proposing an improved solution named regularized MCA (R-MCA).
研究成果
The proposed R-MCA successfully overcomes the limitations of the original MCA, offering improved robustness to outliers, ability to handle nonlinear data through kernelization, and reduced computational complexity. Experimental results confirm the effectiveness of R-MCA in various classification tasks.
研究不足
The original MCA's limitations include sensitivity to noise and outliers, inability to handle nonlinearities in datasets, and high computational complexity. The proposed R-MCA addresses these but may still require careful selection of the regularization parameter λ for optimal performance.