1 / 30

Decision and Risk Analysis

Decision and Risk Analysis. Regression analysis Kiriakos Vlahos Spring 99. Session overview. Why understanding relationships is important Visual tools for analysing relationships Correlation Interpretation Pitfalls Regression Building models Interpreting and evaluating models

marius
Download Presentation

Decision and Risk Analysis

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Decision and Risk Analysis Regression analysis Kiriakos Vlahos Spring 99

  2. Session overview • Why understanding relationships is important • Visual tools for analysing relationships • Correlation • Interpretation • Pitfalls • Regression • Building models • Interpreting and evaluating models • Assessing model validity • Data transformations • Use of dummy variables

  3. Why analysing relationships is important • Development of theory in the social sciences and empirical testing • Finance e.g. • How are stock prices affected by market movements? • What is the impact of mergers on stockholder value? • Marketing e.g. • How effective are different types of advertising? • Do promotions simply shift sales without affecting overall volume? • Economics e.g. • How do interest rates affect consumer behaviour? • How do exchange rates influence imports and exports?

  4. Sales vrs advertising Sales (units) Advertising (£000)

  5. Estimating betas The slope of this line is called the beta of the stock and is an estimate of its market risk.

  6. Scatter plots • What are they? A graphical tool for examining the relationship between variables • What are they good for? For determining • Whether variables are related • the direction of the relationship • the type of relationship • the strength of the relationship

  7. Correlation • What is it? A measure of the strength of linear relationships between variables • How to calculate? a) Calculate standard deviations sx, sy b) Calculate the correlation using the formula • Possible values From -1 to 1

  8. Interpreting the correlation

  9. Correlation Pitfalls • Correlation measures only linear relationships • Existence of a relationship does not imply causality • Even if there exists a causal relationship, the direction may not be obvious

  10. Correlation and Causality Many nations see improving communications as vital to boost overall economy. A 1% increment in telephone density yields an increment of about 0.1% in per-capita GNP, according to a 1983 OECD-ITU study. AT&T advertisement in Fortune Dec 97

  11. Ferric Processing What are the factors influencing production costs? Plant age Capacity ? ? Production costs ? ? Other plant features Plant location Predicting production cost is important for the negotiation of 5-year contracts with steel companies

  12. Visual inspection a) Construct scatter plot b) Calculate correlation (excel function CORREL) The correlation between cost and capacity is -0.84 c) Candidate model Cost = a + b Capacity

  13. Simple Linear Regression Simple regression estimates a linear equation which corresponds to straight line that passes through the data Regression model Cost = 25.2 - 4.4 Capacity Dependent variable Constant or intercept Coefficient or slope Independent or explanatory variable

  14. Least squares Residuals • Residuals are the vertical distances of the points from the regression line • In least squares regression • The sum of squared residuals is minimised • The mean of residuals is zero • residuals are assumed to be randomly distributed around the mean according to the normal distribution

  15. Excel output Observe adjusted R2 s Observe statistics sb Read equation The standard error s is simply the st. deviation of the residuals (a measure of variability) R2 is the most widely measure of goodness of fit. It can be interpreted as the proportion of the variance of the dependent variable explained by the model. Use the adjusted R2 ,which accounts for the no. of observations.

  16. Hypothesis testing Does a relationship between capacity and cost really exist? If we draw a different sample, would we still see the same relationship? Or in stats jargon Is the slope significantly different from zero? y b=0 x b=0 implies no relationship between x and y Hypothesis testing Test whether b=0

  17. t-values and p-values Distribution of estimate of slope if b=0 p-value 0 b t-value * sb sb is the st. deviation of the slope estimate b t-value = b/sb p-value is the probability of getting an estimate of slope at least as large as b. Equivalent tests (5% significance level) |T-value| > 2 p-value < 0.05

  18. Checking residuals Residuals should be random. Any systematic pattern indicates that our model is incomplete. Problematic patterns Heteroscedasticity Autocorrelated residuals

  19. Ferric - Residuals Are residuals random? Can you see any pattern?

  20. Combining theory and judgement The relationship appears to be non linear. We can fit non-linear relationships by introducing suitable transformations, e.g. Ln(y) y Ln(y)=ln(a)+bx y=aebx x x What transformation is appropriate for the Ferric data? Use judgement e.g. Total Cost (TC) = Fixed Cost + Variable Cost TC = FC + Unit Cost (UC)* Quantity(Q) TC/Q = FC/Q + UC e.g. Average Cost = b/Q + a This suggests that average costs are inversely proportionate to capacity

  21. Transforming the data

  22. Model comparison • High adusted R2 • All coefficients significant • t-values or p-values • Low standard error • No pattern in residuals • Is model supported by theory? • Does the model make sense? The transformed model is better: Cost = 11.75 + 7.93 * (1/Capacity)

  23. Forecasting &confidence intervals • If capacity is 2 what is the forecast for cost? • Cost = 11.75 + 7.93 (1/2) = 15.71 • Approximate 95% confidence interval: 15.71  2 * s where s=0.98 is the standard error • The greater the number of observations the better the approximation • More accurate intervals can be calculated using statistical packages

  24. Plot of Fitted Model 29 26 23 COST 20 17 14 0 0.5 1 1.5 2 2.5 3 1/CAPACITY Confidence intervals • Statgraphics gives two sets of intervals. • Outer bands are prediction intervals for an individual plant • Inner bands are confidence intervals for the average cost from all plants. The can be viewed as the confidence intervals for the regression line.

  25. Is plant age important? Multiple regression Cost = a + b(1/Capacity)+ cYear + e Correlation matrix Regression analysis Is this a good model?

  26. Multicollinearity • Multicollinearity means appears when explanatory variables are highly correlated. • Effects: • Including Year adds little information, hence fit does not improve much • Parameter estimates become unreliable • Remedial action: • Remove one of the correlated variables • Moral: • Check for correlations between explanatory variables

  27. Other inappropriate models Influential observations and outliers Clustering of data

  28. Dummy variables Bond purchases and national income War years Regression equation: B = 1.29+.68Y+2.3W

  29. Regression checklist • Visually inspect the data (scatter plots) • Calculate correlations • Develop and fit sensible model(s) • Assess and compare the model(s) • Significance of variables (t-values, p-values) • adjusted R2 • standard error (s) • residual plots • autocorrelation • heteroscedasticity • Normality • Outliers, influencial observations • Does the model make sense? • If you are satisfied use the model for • developing business insights • forecasting

  30. Preparation for Regression workshop • Work on Excel regression tutorial • Revise Ferric case • Read note on Regression Analysis • Select your workshop partner • In preparation for the exam work on regression exercises

More Related