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Hands-on data science for marketing : improve your marketing strategies with machine learning using Python and R

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자료유형 : eBook
ISBN : 178934882X 
ISBN : 9781789348828 
ISBN :
개인저자 : Hwang, Yoon Hyup, author.
서명/저자사항 : Hands-on data science for marketing:  improve your marketing strategies with machine learning using Python and R /:  Yoon Hyup Hwang. 
발행사항 : Birmingham, UK:  Packt Publishing,  2019. 
형태사항 : 1 online resource:  illustrations. 
내용주기 : Cover; Title Page; Copyright and Credits; About Packt; Contributors; Table of Contents; Preface; Section 1: Introduction and Environment Setup; Chapter 1: Data Science and Marketing; Technical requirements; Trends in marketing; Applications of data science in marketing; Descriptive versus explanatory versus predictive analyses; Types of learning algorithms; Data science workflow; Setting up the Python environment; Installing the Anaconda distribution; A simple logistic regression model in Python; Setting up the R environment; Installing R and RStudio; A simple logistic regression model in R 
내용주기 : Chapter 3: Drivers behind Marketing EngagementUsing regression analysis for explanatory analysis; Explanatory analysis and regression analysis; Logistic regression; Regression analysis with Python; Data analysis and visualizations; Engagement rate; Sales channels; Total claim amounts; Regression analysis; Continuous variables; Categorical variables; Combining continuous and categorical variables; Regression analysis with R; Data analysis and visualization; Engagement rate; Sales channels; Total claim amounts; Regression analysis; Continuous variables; Categorical variables 
내용주기 : Combining continuous and categorical variablesSummary; Chapter 4: From Engagement to Conversion; Decision trees; Logistic regression versus decision trees; Growing decision trees; Decision trees and interpretations with Python; Data analysis and visualization; Conversion rate; Conversion rates by job; Default rates by conversions; Bank balances by conversions; Conversion rates by number of contacts; Encoding categorical variables; Encoding months; Encoding jobs; Encoding marital; Encoding the housing and loan variables; Building decision trees; Interpreting decision trees 
내용주기 : Decision trees and interpretations with RData analysis and visualizations; Conversion rate; Conversion rates by job; Default rates by conversions; Bank balance by conversions; Conversion rates by number of contacts; Encoding categorical variables; Encoding the month; Encoding the job, housing, and marital variables; Building decision trees; Interpreting decision trees; Summary; Section 3: Product Visibility and Marketing; Chapter 5: Product Analytics; The importance of product analytics; Product analytics using Python; Time series trends; Repeat customers; Trending items over time 
요약 : Section 2: Descriptive Versus Explanatory Analysis; Chapter 2: Key Performance Indicators and Visualizations; KPIs to measure performances of different marketing efforts; Sales revenue; Cost per acquisition (CPA); Digital marketing KPIs; Computing and visualizing KPIs using Python; Aggregate conversion rate; Conversion rates by age; Conversions versus non-conversions; Conversions by age and marital status; Computing and visualizing KPIs using R; Aggregate conversion rate; Conversion rates by age; Conversions versus non-conversions; Conversions by age and marital status; Summary 
요약 : This book will be an excellent resource for both Python and R developers and will help them apply data science and machine learning to marketing with real-world data sets. By the end of this book, you will be well equipped with the required knowledge and expertise to draw insights from data and improve your marketing strategies. 
일반주제명 : Marketing --  Data processing. -- 
일반주제명 : Machine learning. -- 
일반주제명 : Marketing research. -- 
일반주제명 : Python (Computer program language) -- 
일반주제명 : R (Computer program language) -- 
일반주제명 : Machine learning. -- 
일반주제명 : Marketing --  Data processing. -- 
일반주제명 : Marketing research. -- 
일반주제명 : Python (Computer program language) -- 
일반주제명 : R (Computer program language) -- 
기타형태 저록 : Print version: Hwang, Yoon Hyup. Hands-On Data Science for Marketing : Improve Your Marketing Strategies with Machine Learning Using Python and R. Birmingham : Packt Publishing Ltd, ©2019, 9781789346343
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    1. 1. 예약현황은 홈페이지 로그인 후 예약 페이지에 확인 가능합니다.
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    1. 1. 무인예약대출 현황은 홈페이지 로그인 후 무인예약대출 페이지에 확인 가능합니다.
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    5. 5. 기타 문의사항은 도서관에 문의 바랍니다.
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