1 Takehome 1 Econ 140A/240A 2007. 2 Points about the Project Fitted values from Linear probability model, slides 3 & 4 Fitted values from Linear probability.

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Presentation transcript:

1 Takehome 1 Econ 140A/240A 2007

2 Points about the Project Fitted values from Linear probability model, slides 3 & 4 Fitted values from Linear probability model, slides 3 & 4 Illustrating Student’s t-distribution tests of significance, slides 5 & 6 Illustrating Student’s t-distribution tests of significance, slides 5 & 6 Logit and Probit estimation formulas from EViews help menu, slide 7 (also see Power 14, slides 31-44) Logit and Probit estimation formulas from EViews help menu, slide 7 (also see Power 14, slides 31-44)

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5 95)

% 1.66

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8 Contingency Table For Bern and Bachelor’s

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11 Senior Genr senior=0*(age 54) Genr senior=0*(age 54)

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