SUPORT VECTOR MACHINES FOR CHURN PREDICTION IN THE MOBILE TELECOMMUNICATIONS INDUSTRY SUPORT VECTOR MACHINES FOR CHURN PREDICTION IN THE MOBILE TELECOMMUNICATIONS INDUSTRY
Support Vector Machines - Churn Prediction

SUPORT VECTOR MACHINES FOR CHURN PREDICTION IN THE MOBILE TELECOMMUNICATIONS INDUSTRY

    • 5.0 • 1개의 평가
    • US$9.99
    • US$9.99

출판사 설명

This book presents a CRISP-DM data mining project for implementing a classification model that achieves a predictive performance very close to the ideal model, namely of 99.70%.


This model yields such a high accuracy, mainly, due to the proprietary architecture of the machine learning algorithm used. We implement a support vector machine which is improved using multiple techniques existent in the literature. A detailed theoretical explanation is offered regarding support vector machines, learning algorithms and several optimization algorithms, and each decision taken in building the final architecture is motivated.


To demonstrate the predictive performance of our classification model, we use a telecommunications synthetic dataset that contains call details records (CDR) for 3,333 customers, with 21 independent variables and one dependent variable which indicates the past behavior of these customers with respect to churn. This is a generic dataset frequently used in research as a benchmark for testing different architectures of machine learning algorithms proposed for classification.


The methodology presented in this book is scalable to datasets that have hundreds of thousands of instances and hundreds or thousands of variables coming from various industries such as telecommunications, finance, astronomy, biotech, marketing, healthcare, and many others, and can be applied to any real world classification problem.

장르
컴퓨터 및 인터넷
출시일
2020년
5월 12일
언어
EN
영어
길이
72
페이지
출판사
GAER Publishing House
판매자
Ionut B. Brandusoiu
크기
1.9
MB
HOW TO FINE-TUNE NEURAL NETWORKS FOR CLASSIFICATION HOW TO FINE-TUNE NEURAL NETWORKS FOR CLASSIFICATION
2020년
Fundamentals of Machine Learning for Predictive Data Analytics, second edition Fundamentals of Machine Learning for Predictive Data Analytics, second edition
2020년
Introduction to Machine Learning, fourth edition Introduction to Machine Learning, fourth edition
2020년
Probabilistic Machine Learning Probabilistic Machine Learning
2022년
Efficient Learning Machines Efficient Learning Machines
2015년
Advances in Intelligent Data Analysis XVIII Advances in Intelligent Data Analysis XVIII
2020년
HOW TO FINE-TUNE NEURAL NETWORKS FOR CLASSIFICATION HOW TO FINE-TUNE NEURAL NETWORKS FOR CLASSIFICATION
2020년
NEURAL NETWORKS FOR CHURN PREDICTION IN THE MOBILE TELECOMMUNICATIONS INDUSTRY NEURAL NETWORKS FOR CHURN PREDICTION IN THE MOBILE TELECOMMUNICATIONS INDUSTRY
2020년
BAYESIAN NETWORKS FOR CHURN PREDICTION IN THE MOBILE TELECOMMUNICATIONS INDUSTRY BAYESIAN NETWORKS FOR CHURN PREDICTION IN THE MOBILE TELECOMMUNICATIONS INDUSTRY
2020년
HOW TO FINE-TUNE BAYESIAN NETWORKS FOR CLASSIFICATION HOW TO FINE-TUNE BAYESIAN NETWORKS FOR CLASSIFICATION
2020년
HOW TO FINE-TUNE SUPPORT VECTOR MACHINES FOR CLASSIFICATION HOW TO FINE-TUNE SUPPORT VECTOR MACHINES FOR CLASSIFICATION
2020년
500 Data Science Interview Questions and Answers 500 Data Science Interview Questions and Answers
2020년
500 Machine Learning (ML) Interview Questions and Answers 500 Machine Learning (ML) Interview Questions and Answers
2020년
Planning for Big Data Planning for Big Data
2012년
Artificial Intelligence Business Applications Artificial Intelligence Business Applications
2018년
Real-Time Big Data Analytics: Emerging Architecture Real-Time Big Data Analytics: Emerging Architecture
2013년
Machine Learning Machine Learning
2020년
BAYESIAN NETWORKS FOR CHURN PREDICTION IN THE MOBILE TELECOMMUNICATIONS INDUSTRY BAYESIAN NETWORKS FOR CHURN PREDICTION IN THE MOBILE TELECOMMUNICATIONS INDUSTRY
2020년
NEURAL NETWORKS FOR CHURN PREDICTION IN THE MOBILE TELECOMMUNICATIONS INDUSTRY NEURAL NETWORKS FOR CHURN PREDICTION IN THE MOBILE TELECOMMUNICATIONS INDUSTRY
2020년