fileCustomer-Analytics-11Z7T

Customer Analytics
  • MP416. Implementation of the Model.mp443.41MB
  • MP415. Probability Models.mp436.64MB
  • MP412. Beyond Period 2.mp433.73MB
  • MP414. Data Set Predictions (ry Sharmila or Chris).mp433.40MB
  • MP413. king Predictions Using a DataSet.mp423.94MB
  • MP430. Analytics Applied (Kohl\s NetFlixAmEx and more).mp422.96MB
  • MP426. The Golden Age of rketing.mp422.29MB
  • MP417. Results and Predictions.mp418.94MB
  • MP429. The Perils of Efficiency.mp417.32MB
  • MP421. Parameters of the Model.mp416.40MB
  • MP427. Applications (ROI).mp415.01MB
  • MP431. Conclusion to Application to Analytics.mp413.48MB
  • MP46. Media Planning.mp413.16MB
  • MP427. The Future of rketing is Business Analytics.mp412.27MB
  • MP49. Asking Predictive Questions.mp411.97MB
  • MP47. Types of Desc<x>riptive Analytics.mp411.97MB
  • MP428. Radically New Data Sets in rketing.mp410.73MB
  • MP425. Introduction to Application to Analytics.mp410.41MB
  • MP44. Desc<x>riptive Data Collection.mp410.03MB
  • MP419. What is Presc<x>riptive Analytics.mp49.55MB
  • MP422. rket Structure.mp49.37MB
  • PDF31-_EricBradlow_ppt_Emerging Data Sets in rketing (The Future of Marketing Science).pdf9.32MB
  • MP423. Competition and Online Advertising Models.mp48.84MB
  • MP420. Using the data to ximize revenue.mp48.74MB
  • MP43. What is Desc<x>riptive Analytics.mp48.59MB
  • PDF7-1_Iyengarppt_Desc<x>riptive Customer Analytics (Issues in rketing Research).pdf7.40MB
  • MP410. Regression Analysis (part 1).mp47.32MB
  • MP424. Conclusion(s) to Presc<x>riptive Customer Analytics.mp47.16MB
  • MP411. Regression Analysis (part 2)_The Dend Curve.mp46.71MB
  • MP45. Passive Data Collection.mp46.62MB
  • MP48. Introduction to Predictive Analytics.mp46.44MB
  • MP42. Overview of the Business Analytics Specialization.mp45.10MB
  • MP41. Course Introduction and Overview.mp44.13MB
  • MP418. Introduction to Presc<x>riptive Customer Analytics.mp42.53MB
  • PDF17-1_20150912-WDP-Fader-CustomerCentricity_Chapter4_CourseraCustomerAnalytics001.pdf917.17KB
  • PDF17-3_PeterFader_Predictive Customer Analytics.pdf536.06KB
  • PDF24-1_RonBern_ppt_Presc<x>riptive Customer Analytics.pdf342.69KB
  • PDF17-2_Iyengar2ppt_Customer Analytics (Regression Analysis).pdf280.27KB
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