Customer data present a host of complex statistical challenges, from atypical distributions and rare events, to censoring and panel mortality, to ambiguous causal pathways. This seminar empowers participants to leverage the latest innovations in data science to address these issues and uncover actionable customer insights. The seminar is a balance of theory and practice: The statistical and methodological issues for each topic are carefully explained at an intuitive level, and then participants run through guided, hands-on examples using R and Python.
There are no formal prerequisites for this course, but participants should have a basic familiarity with statistical concepts, such as regression and inference. For participants without exposure to R and Python (e.g., if a participant is not sure what a dataframe is), we can suggest short tutorials to bring them up to speed prior to attending the seminar.
Topics
Brand Loyalty: NPS and Competitive Loyalty Studies
Insights from Behavioral Economics: Anchoring, Confirmation Bias, Conjoint Analysis
Optimization through Experimental Design and A/B Testing
Propensity Scoring Methods
Cluster Analysis & Principal Components
Special Statistical Issues: Censoring
Special Statistical Issues: Rare Event Analysis
Special Statistical Issues: Time to Event Analysis
Intro to Sentiment Analysis & NLP
Schedule
Day 1, morning session 1: Brand Loyalty
Statistical Challenges/Solutions for NPS and Competitive Loyalty Studies
Day 1, morning session 2: Insights from Behavioral Economics
Anchoring, Confirmation Bias, Conjoint Analysis
Day 1, afternoon session 1: Cloud-Based Development Environment
Review student applications and data
AWS console
Security and user permissions
Manage EC2 instances & S3 buckets
Amazon SageMaker
Day 1, afternoon session 2: Practice & Review with Cloud-Based Tools
Practice with Python, Jupyter, git, and AWS training data tools
Day 2, morning session 1: Experimental Design
A/B Testing and Beyond
Day 2, morning session 2: Propensity Scoring Methods
Propensity Scoring: Methodology, Pitfalls, and Discussion
Day 2, afternoon session 1: Practice & Review
Apply A/B testing and propensity scoring
Day 2, afternoon session 2: Clustering and Dimensional Analysis
Principal Components, Factor Analysis, K-Means Clustering
Day 3, morning session 1: Practice & Review
Implement principal Components, factor analysis, and k-means using student or instructor-supplied data
Day 3, morning session 2: Special Statistical Issues – Censoring
Censoring in Customer Analytics: Special Topics & Solutions
Day 3, afternoon session 1: Special Statistical Issues – Rare Event Analysis
Rare Event Analysis: Special Topics & Solutions
Day 3, afternoon session 2: Special Statistical Issues – Time to Event Analysis
Time to Event Analysis: Special Topics & Solutions
Day 4, morning session 1: Introduction to Sentiment Analysis & NLP
Leveraging the Power of Natural Language Processing: An Introduction
Day 4, morning session 2:
Review specific topics as a class or small groups
Guided development and problem solving
1.1 development coaching
Day 4, afternoon session:
Optional individualized 1.1 assistance
Ensure each student leaves with a functioning application