Sampling Distribution 6 Chapter5 Parameter Estimation 4 Mid-term Questions and Discussion 2 Chapter6 Hypothesis Testing 6 Chapter7 Statistical Sampling 6 Chapter8 Analysis of variance 6 Group Presentation 2 Chapter9 Simple Linear Regression 6 Chapter10 Multiple Linear Regression 4 Chapter11 Time Series and Index numbers 4 Questions and Discussion 2 Summation 54 3.Course Content Chapter1 General Introduction and Statistical Data 1.1 Concepts of statistical data 1.2 Collections of statistical data 1.3
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Chapter 1 Multivariate analysis refers to all statistical techniques that simultaneously analyze multiple measurements on individuals or objects under investigation. Factor analysis identifies the structure underlying a set of variables Discriminant analysis differentiates among groups based on a set of variables. All the variables must be random and interrelated in such ways that their different effects cannot meaningfully be interpreted separately. Nonmetric measurement scales Nominal
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Linear Regression with 1 regressor (CHAPTER 4) Aim: estimate the causal effect on Y of a unit change in X Slope: expected change on Y for a unit change in X E[X|Y] = b0 + b1X Method: minimize the sum of square errors or average squared difference between actual Yi and predicted Yi‚ min u (OLS)‚ u = error which contains omitted factors that influence Y that is not captured in X and also error in measurement in Y b0 and b1 are population parameter‚ the hats are the estimates‚ we pick the hats so
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ISDS CASE 16.2 2012 Executive Summary: We believe that utilizing Regression Analysis will provide us with enough data to make an accurate prediction. Regression Analysis is simply put using the value of one dependent variable Y based on the data of other independent variable(s) X. To conduct a Regression Analysis‚ we need to input data from two variables and produce a Regression equation that describes the relationship between the dependent variable and the independent variable. A dependent variable
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Airport Linear Regression Analysis Larp Wilder Capella University Introduction The data set presented the percentage of flight delay during arrival and departure from 13 airports The information is from the Federal Aviation Administration. The assumption of the data is normally distributed with the level of significance at 5%. The below analysis determines whether there is a positive linear relationship between late arrivals and late departures. Visual displays of data of 13 airport arrival and
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ECO 1 chapter An overview of regression analysis Econometrics – literally ‚‚economic measurement” is the quantitative measurement and analysis of actual economic and business phenomena. Econometrics has three major uses: 1) Describing economic reality 2) Testing hypothesis about economic theory 3) Forecasting future economic activity The simplest use of econometrics is description. For most goods‚ the relationship between consumption and disposable income is expected
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market timing‚ such as size‚ growth and momentum timing. (Car hart‚ 1997) The six portfolios meant to minimize underlying risk factor in returns related to size& book-to-market equity. (Fama‚ et al. 1993) The variable name and description for regression of CAPM‚ 3-factor‚ 4-factor and 5- factor models are: Variable Names Description MF1_RF Returns of the mutual fund 1 MF2_RF Returns of the mutual fund 2 RM Market Index RF Risk free rate RM_RF CRSP index 1-month T-Bill SMB Small
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the table‚ one issue arises. There is a collinearity issue between TV and Internet. The correlation is .91 which shows that the variables are highly correlated. To choose which variable should be kept‚ two regressions must be run‚ one without each variable. When evaluating these regressions‚ the variable that leads to the higher R Square value needs to
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is correct which indicates that the percentage of the total sample variation of the credit balance value is accounted for by the model. 5. Test the utility of this regression model (use a two tail test with α =.05). Interpret your results‚ including the p-value. Regression Analysis: Credit Balance ($) versus Size The regression equation is Credit Balance ($) = 2591 + 403 Size Predictor Coef SE Coef T P Constant 2591.4 195.1 13.29 0.000 Size 403.22 50.95
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conceptual Model 7 2.2 Justification for the selection of variables 8 3.0 Regression Analysis 8 3.1 Regression Analysis for Entire Sector ( Both HSBC & LLOYDS TSB) 8 3.2.3 Interpretation of the model coefficients – HSBC 9 Focusing on the reasons showing significance‚ it can be observed that X4 and X6 are very significance. 10 3.1.0 Interpretation of Model for sector (HSBC & LLOYS TSB) 10 3.1.1 Regression Analysis Model 10 3.1.2 Goodness-of-fit: Sector: 10 3.1.3 Interpretation
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