Outline Class Intros Overview of Course & Series Example Research Projects Beginning R.

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Presentation transcript:

Outline Class Intros Overview of Course & Series Example Research Projects Beginning R

What are your goals? What types of problems? datasets? Which software do you currently use? Introductions

Specialized Software Programming Language Statistical Software DataViz Who What When Where Why or How?

Course / Certificate Overview u

TBAN100 APPLIED STATISTICS TBAN120 DATABASE MANAGEMEN T TBAN130 DATA MINING TBAN110 PREDICTIVE MODELING

Comparison of Data-Related Certificates

Modeler Survey of Data-Related Roles

Predictive Analytics Data Analysis SoftwareStatistics Data Mining

Continuous & Categorical Variables ContinuousCategorical Continuous Categorical Histogram Scatter Bar Cross Table Boxplot Predictor Variable (X-Axis) Pie Height Smartphone? Yes or No (Frequency) Outcome, Dependent Variable (Y-Axis) Mosaic Cross Table Logistic Regression Linear Regression Decision Trees

Breadth vs. Depth vs. Relevancy Class Project

Variables Y X’s Height Independent Variables Dependent Variables Y X4 X3 X2X1

Extensions to Linear Regression Interaction (Non-Linear) Structural Equation Modeling Moderation Mediation Advanced Lasso Ridge Regularized

HR Example

TBAN110 PREDICTIVE MODELING

TBAN120 DATABASE MANAGEMENT SYSTEMS Normalization Database creation Generating Reports Changing Databases Join Structured Query Language

TBAN130 DATA MINING