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Incremental and Adaptive L1-Norm Principal Component Analysis: Novel Algorithms and Applications

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Figure

Figure 1.1: Projection error minimization PCA.
Figure 1.2: Projection variance maximization PCA.
Table 1.1: Possible causes of outliers in few applications of interest.
Figure 1.3: Line-fitting for nominal data.
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