Coefficient of Variation and Machine Learning Applications Intelligent Signal Processing and Data Analysis Series
Coefficient of Variation (CV) is a unit free index indicating the consistency of the data associated with a real-world process and is simple to mold into computational paradigms. This book provides necessary exposure of computational strategies, properties of CV and extracting the metadata leading to efficient knowledge representation. It also compiles representational and classification strategies based on the CV through illustrative explanations. The potential nature of CV in the context of contemporary Machine Learning strategies and the Big Data paradigms is demonstrated through selected applications. Overall, this book explains statistical parameters and knowledge representation models.
1. Introduction to Statistical Dispersion 2. Coefficient of Variation 3. Coefficient of Variation Computational Strategies 4. Coefficient of Variation Based Image Representation 5. Coefficient of Variation based Decision Tree (CvDT) 6. Some Applications.
Date de parution : 06-2021
13.8x21.6 cm
Date de parution : 12-2019
13.8x21.6 cm
Mots-clés :
CV Computation; CVT; Big Data paradigms; MDP; machine learning applications; UCI Repository; computational strategies; CVE; Coefficient of Variation; Data Sets; Fuzzy Decision System; Shorter Length Interval; Mixed Data Analysis; RGB Color; RGB; Elbow Method; Initial Basic Feasible Solution; Flag Vector; Gini Index; Decision Attribute; Queried Image; Feature Vector; Train Data; Absolute Coefficient; Splitting Attribute; Bit Vectors; CBIR; Elm; Regression Tree