Design of an Adaptive Classification Procedure for the Analysis of High-Dimensional Data with Limited Training Samples
نویسندگان
چکیده
.......................................................................................................................................................... V CHAPTER 1: INTRODUCTION ..................................................................................................................... 1 CHAPTER 2: EFFECT OF SEMI-LABELED SAMPLES IN REDUCING THE SMALL SAMPLE SIZE PROBLEM AND MITIGATING THE HUGHES PHENOMENON ................................................. 9 2.
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