Part 0: Introduction 0-1/17 Regression and Forecasting Models Professor William Greene Stern School of Business IOMS Department Department of Economics.

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Part 0: Introduction 0-1/17 Regression and Forecasting Models Professor William Greene Stern School of Business IOMS Department Department of Economics

Part 0: Introduction 0-2/17 Regression and Forecasting Models Part 0 - Introduction

Part 0: Introduction 0-3/17  Professor William Greene; Economics and IOMS Departments  Office: KMEC, 7-90 (Economics Department)  Office phone:   URL:

Part 0: Introduction 0-4/17 Course Objectives  Basic understanding: The regression model as a framework for the analysis of relationships among variables  Technical know how: How to formulate a regression model, estimate its parameters, and understand the implications of the estimated model.

Part 0: Introduction 0-5/17 We used McDonald’s Per Capita

Part 0: Introduction 0-6/17 Macs and Movies Countries and Some of the Data Code Pop(mm) per cap # of Language Income McDonalds 1 Argentina Spanish 2 Chile, Spanish 3 Spain Spanish 4 Mexico Spanish 5 Germany German 6 Austria German 7 Australia English 8 UK UK Genres (MPAA) 1=Drama 2=Romance 3=Comedy 4=Action 5=Fantasy 6=Adventure 7=Family 8=Animated 9=Thriller 10=Mystery 11=Science Fiction 12=Horror 13=Crime

Part 0: Introduction 0-7/17 Movie Genres

Part 0: Introduction 0-8/17 Movie Madness Data (n=2198)

Part 0: Introduction 0-9/17

Part 0: Introduction 0-10/17 Case Study Using A Regression Model: A Huge Sports Contract  Alex Rodriguez hired by the Texas Rangers for something like $25 million per year in  Costs – the salary plus and minus some fine tuning of the numbers  Benefits – more fans in the stands.  How to determine if the benefits exceed the costs? Use a regression model.

Part 0: Introduction 0-11/17 Baseball Data (Panel Data – 31 Teams, 17 Years)

Part 0: Introduction 0-12/17 A Regression Model 

Part 0: Introduction 0-13/17  =  1 =  2 =  3 =

Part 0: Introduction 0-14/17 Marginal Value of an A Rod  8 games * 32,757 fans + 1 All Star = = 298,016 new fans  298,016 new fans * $18 per ticket $2.50 parking etc. $1.80 stuff (hats, bobble head dolls,…)  $6.67 Million per year !!!!!  It’s not close. (Marginal cost is at least $16.5M / year)

Part 0: Introduction 0-15/17 Course Prerequisites  Basic algebra. (Especially summation)  Geometry (straight lines)  Logs and exponents  NOTE: I (you) will use only base e (natural) logs, not base 10 (common) logs in this course.  Previous course in basic statistics – up to testing a hypothesis about a mean

Part 0: Introduction 0-16/17 Course Materials  Notes: Distributed in first class  Text: McClave, Benson, Sincich; Statistics for Business and Economics (2 nd Custom NYU edition), Pearson,  On the course website: Class slide presentations Problem sets Data sets for exercises

Part 0: Introduction 0-17/17 Course Software: Minitab The Current Version: Minitab 16 Buy: Professional Bookstore Rent: e5.onthehub.com $29.99 to rent for 6 months, $99.99 to own Search: e5.onthehub.com minitab