Hybrid Classifiers - Methods of Data, Knowledge, and Classifier Combination
نویسنده
چکیده
Find the secret to improve the quality of life by reading this hybrid classifiers methods of data knowledge and classifier combination. This is a kind of book that you need now. Besides, it can be your favorite book to read after having this book. Do you ask why? Well, this is a book that has different characteristic with others. You may not need to know who the author is, how well-known the work is. As wise word, never judge the words from who speaks, but make the words as your good value to your life.
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