Undergraduate Econometrics

Undergraduate Econometrics

Ben Lambert via YouTube Direct link

Estimator for the population error variance

80 of 199

80 of 199

Estimator for the population error variance

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Undergraduate Econometrics

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  1. 1 Undergraduate econometrics syllabus
  2. 2 What is econometrics?
  3. 3 Econometrics vs hard science
  4. 4 Natural experiments in econometrics
  5. 5 Populations and samples in econometrics
  6. 6 Estimators - the basics
  7. 7 Estimator properties
  8. 8 Unbiasedness and consistency
  9. 9 Unbiasedness vs consistency of estimators - an example
  10. 10 Efficiency of estimators
  11. 11 Good estimator properties summary
  12. 12 Lines of best fit in econometrics
  13. 13 The mathematics behind drawing a line of best fit
  14. 14 Least Squares Estimators as BLUE
  15. 15 Deriving Least Squares Estimators - part 1
  16. 16 Deriving Least Squares Estimators - part 2
  17. 17 Deriving Least Squares Estimators - part 3
  18. 18 Deriving Least Squares Estimators - part 4
  19. 19 Deriving Least Squares Estimators - part 5
  20. 20 Least Squares Estimators - in summary
  21. 21 Taking expectations of a random variable
  22. 22 Moments of a random variable
  23. 23 Central moments of a random variable
  24. 24 Kurtosis
  25. 25 Skewness
  26. 26 Expectations and Variance properties
  27. 27 Covariance and correlation
  28. 28 Population vs sample quantities
  29. 29 The Population Regression Function
  30. 30 Problem set 1 - estimators introduction
  31. 31 Gauss-Markov assumptions part 1
  32. 32 Gauss-Markov assumptions part 2
  33. 33 Zero conditional mean of errors - Gauss-Markov assumption
  34. 34 Omitted variable bias - example 1
  35. 35 Omitted variable bias - example 2
  36. 36 Omitted variable bias - example 3
  37. 37 Omitted variable bias - proof part 1
  38. 38 Omitted variable bias - proof part 2
  39. 39 Reverse Causality - part 1
  40. 40 Reverse Causality - part 2
  41. 41 Measurement error in independent variable - part 1
  42. 42 Measurement error in independent variable - part 2
  43. 43 Functional misspecification 1
  44. 44 Functional misspecification 2
  45. 45 Linearity in parameters - Gauss-Markov
  46. 46 Random sample summary - Gauss-Markov
  47. 47 Gauss-Markov - explanation of random sampling and serial correlation
  48. 48 Serial Correlation summary
  49. 49 Serial Correlation - as a symptom of omitted variable bias
  50. 50 Serial Correlation - as a symptom of functional misspecification
  51. 51 Serial Correlation - caused by measurement error
  52. 52 Serial correlation biased standard errors (advanced topic) - part 1
  53. 53 Serial correlation biased standard errors (advanced topic) - part 2
  54. 54 Heteroskedasticity summary
  55. 55 Heteroskedastic errors - example 1
  56. 56 Heteroskedasticity - example 2
  57. 57 Heteroskedasticity caused by data aggregation (advanced topic)
  58. 58 Perfect collinearity - example 1
  59. 59 Perfect collinearity - example 2
  60. 60 Multicollinearity
  61. 61 Index - where we currently are in the overall plan of econometrics
  62. 62 Gauss-Markov proof part 1 (advanced)
  63. 63 Gauss-Markov proof part 2 (advanced)
  64. 64 Gauss-Markov proof part 3 (advanced)
  65. 65 Gauss-Markov proof part 4 (advanced)
  66. 66 Gauss-Markov proof part 5 (advanced)
  67. 67 Gauss-Markov proof part 6 (advanced)
  68. 68 Errors in populations vs estimated errors
  69. 69 Sum of squares
  70. 70 R squared part 1
  71. 71 R squared part 2
  72. 72 Degrees of freedom part 1
  73. 73 Degrees of freedom part 2 (advanced)
  74. 74 Overfitting in econometrics
  75. 75 Adjusted R squared
  76. 76 Unbiasedness of OLS - part one
  77. 77 Unbiasedness of OLS - part two
  78. 78 Variance of OLS estimators - part one
  79. 79 Variance of OLS estimators - part two
  80. 80 Estimator for the population error variance
  81. 81 Estimated variance of OLS estimators - intuition behind maths
  82. 82 Variance of OLS estimators in the presence of heteroscedasticity
  83. 83 Variance of OLS estimators in the presence of serial correlation
  84. 84 Gauss Markov conditions summary of problems of violation
  85. 85 Estimating the population variance from a sample - part one
  86. 86 Estimating the population variance from a sample - part two
  87. 87 Problem set 2 - OLS introduction - NBA players' wages
  88. 88 Hypothesis testing
  89. 89 Hypothesis testing - one and two tailed tests
  90. 90 Central Limit Theorem
  91. 91 Hypothesis testing in linear regression part 1
  92. 92 Hypothesis testing in linear regression part 2
  93. 93 Hypothesis testing in linear regression part 3
  94. 94 Hypothesis testing in linear regression part 4
  95. 95 Hypothesis testing in linear regression part 5
  96. 96 Normally distributed errors - finite sample inference
  97. 97 Tests for normally distributed errors
  98. 98 Interpreting Regression Coefficients in Linear Regression
  99. 99 Interpreting regression coefficients in log models part 1
  100. 100 Interpreting regression coefficients in log models part 2
  101. 101 The benefits of a log dependent variable
  102. 102 Dummy variables - an introduction
  103. 103 Dummy variables - interaction terms explanation
  104. 104 Continuous variables - interaction term interpretation
  105. 105 The F statistic - an introduction
  106. 106 F test - example 1
  107. 107 F test - example 2
  108. 108 F test - the similarity with the t test
  109. 109 The F test - R Squared form
  110. 110 Testing hypothesis about linear combinations of parameters - part 1
  111. 111 Testing hypothesis about linear combinations of parameters - part 2
  112. 112 Testing hypothesis about linear combinations of parameters - part 3
  113. 113 Testing hypothesis about linear combinations of parameters - part 4
  114. 114 Confidence intervals
  115. 115 The Goldfeld-Quandt test for heteroscedasticity
  116. 116 The Breusch Pagan test for heteroscedasticity
  117. 117 The White test for heteroscedasticity
  118. 118 Serial correlation testing - introduction
  119. 119 Serial correlation - The Durbin-Watson test
  120. 120 Serial correlation testing - the Breusch-Godfrey test
  121. 121 Ramsey RESET test for functional misspecification
  122. 122 Gauss-Markov violations: summary of issues
  123. 123 Heteroscedasticity: as a symptom of omitted variable bias - part 1
  124. 124 Heteroscedasticity: as symptom of omitted variable bias - part 2
  125. 125 Serial correlation: a symptom of omitted variable bias
  126. 126 Heteroscedasticity: dealing with the problems caused
  127. 127 Problem set 3 - Presidential election data - hypothesis testing and model selection
  128. 128 Weighted Least Squares: an introduction
  129. 129 Weighted Least Squares: mathematical introduction
  130. 130 Weighted Least Squares: an example
  131. 131 Weighted Least Squares in practice - feasible GLS - part 1
  132. 132 Weighted Least Squares in practice - feasible GLS - part 2
  133. 133 How to address the issue of serial correlation
  134. 134 GLS estimation to correct for serial correlation
  135. 135 fGLS for serially correlated errors
  136. 136 Instrumental Variables - an introduction
  137. 137 Endogeneity and Instrumental Variables
  138. 138 Instrumental Variables intuition - part 1
  139. 139 Instrumental Variables intuition - part 2
  140. 140 Instrumental Variables example - returns to schooling
  141. 141 Instrumental Variables example - classroom size
  142. 142 Instrumental Variables estimation - colonial origins of economic development
  143. 143 Instrumental Variables as Two Stage Least Squares
  144. 144 Proof that Instrumental Variables estimators are Two Stage Least Squares
  145. 145 Bad instruments - part 1
  146. 146 Bad instruments - part 2
  147. 147 Bias of Instrumental Variables - part 1
  148. 148 Bias of Instrumental Variables - part 2
  149. 149 Bias of Instrumental Variables - intuition
  150. 150 Consistency of Instrumental Variables - intuition
  151. 151 Consistency - comparing Ordinary Least Squares with Instrumental Variables
  152. 152 Inference using Instrumental Variables estimators
  153. 153 Multiple regressor Instrumental Variables estimation
  154. 154 Two Stage Least Squares - an introduction
  155. 155 Two Stage Least Squares - example
  156. 156 Two Stage Least Squares - multiple endogenous explanatory variables
  157. 157 Testing for endogeneity
  158. 158 Testing for endogenous instruments - test for overidentifying restriction
  159. 159 Problem set 4 - the return to education - WLS and IV estimators
  160. 160 Time series vs cross sectional data
  161. 161 Time series Gauss Markov conditions
  162. 162 Strict exogeneity
  163. 163 Strict exogeneity assumption - intuition
  164. 164 Lagged dependent variable model - strict exogeneity
  165. 165 Asymptotic assumptions for time series least squares
  166. 166 Conditions for stationary and weakly dependent series
  167. 167 Stationary in mean
  168. 168 Spurious regression
  169. 169 Spurious regression
  170. 170 Variance stationary processes
  171. 171 Covariance stationary processes
  172. 172 Stationary series summary
  173. 173 Weakly dependent time series
  174. 174 An introduction to Moving Average Order One processes
  175. 175 Moving Average processes - Stationary and Weakly Dependent
  176. 176 Autoregressive Order one process introduction and example
  177. 177 Autoregressive order 1 process - conditions for stationary in mean
  178. 178 Autoregressive order 1 process - conditions for stationary in variance
  179. 179 Autoregressive order 1 process - conditions for Stationary Covariance and Weak Dependence
  180. 180 Autoregressive vs Moving Average Order One processes - part 1
  181. 181 Autoregressive vs Moving Average Order One processes - part 2
  182. 182 Partial vs total autocorrelation
  183. 183 A Random Walk - introduction and properties
  184. 184 The qualitative difference between stationary and non-stationary AR(1)
  185. 185 Random walk not weakly dependent
  186. 186 Random walk with drift
  187. 187 Deterministic vs stochastic trends
  188. 188 Dickey Fuller test for unit root
  189. 189 Augmented Dickey Fuller tests
  190. 190 Dickey fuller test with time trend
  191. 191 Highly persistent time series
  192. 192 Integrated order of processes
  193. 193 Cointegration - an introduction
  194. 194 Cointegration tests
  195. 195 Levels vs differences regression - motivation for cointegrated regression
  196. 196 Leads and lags estimator for inference in cointegrated models (advanced)
  197. 197 Lagged independent variables
  198. 198 Problem set 5 - an introduction to time series
  199. 199 Mean and median lag

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