Examples of linear regression in the following topics:
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- One can forecast based on linear relationships.
- Regression Analysis is a causal / econometric forecasting method.
- These methods include both parametric (linear or non-linear) and non-parametric techniques.
- The predictors are linearly independent, i.e. it is not possible to express any predictor as a linear combination of the others.
- Familiar methods, such as linear regression and ordinary least squares regression, are parametric, in that the regression function is defined in terms of a finite number of unknown parameters that are estimated from the data.
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- The Forex Beta measures the economic exposure and is a parameter estimate of a linear regression equation.
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- You'll recognize the first half of this equation as the simple CAPM calculation, while the second half includes SMB (small minus big market capitalization) and HML (high minus low book-to-market ratio) multiplied by coefficients (from linear regression).
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- The Arbitrage Pricing Theory (APT) is a linear relationship between systemic factors and the return of an asset.
- It is a generalized linear function for determining the price of an asset.
- One of the most important aspects of APT is that, like CAPM, the relationship between each factor and the return is linear.
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- The Fama–French three-factor model is a linear model designed by Eugene Fama and Kenneth French to describe stock returns.
- Like CAPM and the Arbitrage Pricing Theory, the Fama-French three-factor model is a linear model that relates structural factors to the expected return of an asset.
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- An analyst measures the economic exposure by estimating a regression equation, shown in Equation 24.
- Regression equation measures the association between the asset's price and the exchange rate.
- We can estimate the regression equation easily, and we calculate ($\beta$) by using Equation 25.
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- Research based on regression and scatter diagrams has strongly supported Samuelson's dictum.
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- Sensitivity Analysis deals with finding out the amount by which we can change the input data for the output of our linear programming model to remain comparatively unchanged.
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- ., the federal fund rates in the United States), πt is the rate of inflation as measured by the GDP deflator, π*t is the desired rate of inflation, r*t is the assumed equilibrium real interest rate, yt is the logarithm of real GDP, and y*t is the logarithm of potential output, as determined by a linear trend.
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- If the interest rates are low, then we can use a linear approximation that yields Equation 21.