Machine Learning for Marketing Analytics in R
In this course you'll learn how to use data science for several common marketing tasks.
Kurs Kostenlos Starten4 Stunden17 Videos60 Übungen12.748 LernendeLeistungsnachweis
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Kursbeschreibung
This is your chance to dive into the worlds of marketing and business analytics using R. Day by day, there are a multitude of decisions that companies have to face. With the help of statistical models, you're going to be able to support the business decision-making process based on data, not your gut feeling. Let us show you what a great impact statistical modeling can have on the performance of businesses. You're going to learn about and apply strategies to communicate your results and help them make a difference.
Trainierst du 2 oder mehr?
Verschaffen Sie Ihrem Team Zugriff auf die vollständige DataCamp-Plattform, einschließlich aller Funktionen.In den folgenden Tracks
Marketing-Analytik mit R
Gehe zu Track- 1
Modeling Customer Lifetime Value with Linear Regression
KostenlosHow can you decide which customers are most valuable for your business? Learn how to model the customer lifetime value using linear regression.
Customer lifetime value in CRM50 xpBenefits of knowing CLV50 xpLooking at data100 xpSimple linear regression50 xpUnderstanding residuals50 xpEstimating simple linear regression100 xpMultiple linear regression50 xpAvoiding multicollinearity100 xpInterpretation of coefficients50 xpModel validation, model fit, and prediction50 xpInterpretation of model fit50 xpFuture predictions of sales100 xp - 2
Logistic Regression for Churn Prevention
Predicting if a customer will leave your business, or churn, is important for targeting valuable customers and retaining those who are at risk. Learn how to model customer churn using logistic regression.
Churn prevention in online marketing50 xpApplication churn prevention50 xpData discovery100 xpPeculiarities of the dependent variable50 xpModeling and model selection50 xpModel specification and estimation100 xpStatistical significance50 xpModel specification100 xpIn-sample model fit and thresholding50 xpIn-sample fit full model100 xpIn-sample fit restricted model100 xpFinding the optimal threshold100 xpDanger of overfitting50 xpOut-of-sample validation and cross validation50 xpAssessing out-of-sample model fit100 xpCross validation100 xp - 3
Modeling Time to Reorder with Survival Analysis
Learn how to model the time to an event using survival analysis. This could be the time until next order or until a person churns.
Survival analysis: introduction50 xpApplications of survival analysis50 xpData for survival analysis100 xpCharacteristics of survival analysis50 xpSurvival curve analysis by Kaplan Meier50 xpSurvival function, hazard function and hazard rate50 xpThe survival object100 xpKaplan-Meier Analysis100 xpCox PH model with constant covariates50 xpProportional hazard assumption50 xpCox Proportional Hazard Model100 xpInterpretation of coefficients50 xpChecking model assumptions and making predictions50 xpViolation of the PH assumption50 xpModel assumptions100 xpPredictions100 xp - 4
Reducing Dimensionality with Principal Component Analysis
CRM data can get very extensive. Each metric you collect could carry some interesting information about your customers. But handling a dataset with too many variables is difficult. Learn how to reduce the number of variables in your data using principal component analysis. Not only does this help to get a better understanding of your data. PCA also enables you to condense information to single indices and to solve multicollinearity problems in a regression analysis with many intercorrelated variables.
PCA for CRM data50 xpPurposes of PCA50 xpGetting to know the data100 xpExploring the correlation structure50 xpPCA computation50 xpStandardization of data50 xpCompute a PCA100 xpThe result object of a PCA50 xpChoosing the right number of principal components50 xpHow many components are relevant?100 xpInterpretation of components100 xpVisualization with a biplot100 xpPrincipal components in a regression analysis50 xpRegression analysis with many variables50 xpLinear regression with principal components100 xpClosing50 xp
Trainierst du 2 oder mehr?
Verschaffen Sie Ihrem Team Zugriff auf die vollständige DataCamp-Plattform, einschließlich aller Funktionen.In den folgenden Tracks
Marketing-Analytik mit R
Gehe zu TrackDatensätze
Churn dataSales dataSales data, months 2-4Survival dataDefault dataNews dataFirst CLV datasetSecond CLV datasetCustomer dataMitwirkende
Voraussetzungen
Introduction to Regression in RVerena Pflieger
Mehr AnzeigenData Scientist at INWT Statistics
Was sagen andere Lernende?
Melden Sie sich an 15 Millionen Lernende und starten Sie Machine Learning for Marketing Analytics in R Heute!
Kostenloses Konto erstellen
oder
Durch Klick auf die Schaltfläche akzeptierst du unsere Nutzungsbedingungen, unsere Datenschutzrichtlinie und die Speicherung deiner Daten in den USA.