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QUESTION FOUR Given a simple model: \[ y=\beta_{0}+\beta_{1} x+u \] a) Write the OLS estimators for \( \beta_{0} \) and \( \beta_{1} \). ( 8 marks) b) What is \( u \) and what does it include? ( 10 marks) c) If you are to estimate the model above, what would be the required OL̈S assumption about the expectation of the error term \( u \) and variable \( x \)

Ask by Campos Reeves. in Tanzania
Feb 24,2025

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a) The OLS estimators for β₀ and β₁ are: - β̂₁ = [Σ (xᵢ – x̄)(yᵢ – ȳ)] / [Σ (xᵢ – x̄)²] - β̂₀ = ȳ – β̂₁ x̄ b) The error term u represents all factors affecting y that are not included in the model, such as omitted variables and measurement errors. c) The OLS assumption is that the expected value of u given x is zero: E(u | x) = 0, meaning x is not correlated with the error term.

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Below is a detailed answer addressing each part of the question. ────────────────────────────── a) OLS Estimators for β₀ and β₁ For the simple linear regression model   y = β₀ + β₁x + u, the Ordinary Least Squares (OLS) estimators are derived by minimizing the sum of squared residuals. • The slope estimator (β₁) is given by:   β̂₁ = [Σ (xᵢ – x̄)(yᵢ – ȳ)] / [Σ (xᵢ – x̄)²], where x̄ and ȳ are the sample means of x and y, respectively. • The intercept estimator (β₀) is computed as:   β̂₀ = ȳ – β̂₁ x̄. ────────────────────────────── b) Meaning and Contents of u (Error Term) In the model y = β₀ + β₁x + u, the term u is the error term (also called the disturbance term). It represents all the factors affecting y that are not captured by the explanatory variable x. In more detail:  • u is the difference between the observed value of y and the value predicted by the regression function (i.e., y - [β₀ + β₁x]).  • u includes:   – Omitted variables that influence y,   – Measurement errors in the dependent variable or in variables not explicitly included in the regression,   – Effects of random shocks,   – Any other influences on y that are not accounted for by x. The error term is assumed to capture the collective influence of all such unobserved elements and is considered random. ────────────────────────────── c) Required OLS Assumption about the Expectation of u Given x To ensure unbiasedness of the OLS estimators, a key assumption is that the error term u has a zero conditional mean given x. This is expressed as:   E(u | x) = 0. This assumption implies that:  • The expected value of u is zero for any given value of x,  • There is no systematic relationship (or correlation) between the explanatory variable x and the error term u.  • In other words, the explanatory variable x is exogenous. This exogeneity condition is critical because if u were correlated with x, the OLS estimators would be biased and inconsistent, invalidating inference. ────────────────────────────── Summary a) The OLS estimators are:   β̂₁ = [Σ (xᵢ – x̄)(yᵢ – ȳ)] / [Σ (xᵢ – x̄)²]  and  β̂₀ = ȳ – β̂₁ x̄. b) The error term u represents all unobserved factors affecting y, such as omitted variables, measurement error, and random shocks. c) The required OLS assumption regarding the error term is that its conditional expectation given x is zero: E(u | x) = 0, ensuring that x is exogenous.

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The Ordinary Least Squares (OLS) estimators for the coefficients in your linear model can be expressed as follows: \(\hat{\beta}_1 = \frac{Cov(x, y)}{Var(x)}\) and \(\hat{\beta}_0 = \bar{y} - \hat{\beta}_1 \bar{x}\). Here, \(\hat{\beta}_1\) represents the slope, showing how much \(y\) changes for a unit change in \(x\), while \(\hat{\beta}_0\) denotes the intercept, or the expected value of \(y\) when \(x\) is zero. The term \(u\) represents the error term or the residuals in the model, capturing the difference between observed values and those predicted by the model. It encompasses all factors affecting \(y\) that are not included in \(x\), such as measurement errors, omitted variables, or random influences. Essentially, it's what "randomly" affects \(y\) after accounting for \(x\). For the assumptions required for OLS, one crucial part is that the expected value of the error term \(u\) must be zero when conditioning on \(x\), expressed mathematically as \(E[u | x] = 0\). This means that the error terms should not be systematically associated with the predictor variable \(x\), ensuring that the model's predictions reflect the true relationship between \(x\) and \(y\) without bias from unobserved factors.

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