Even if returns are truly forecasted by variables such as the dividend yield, the noise in such a predictive regression may overwhelm the signal of the conditioning variable and render estimation, inference and forecasting unreliable. Unfortunately, traditional asymptotic approximations are not suitable to investigate the small sample properties of forecasting regressions with excessive noise. To systematically analyze predictive regressions, it is useful to quantify a forecasting variable’s signal relative to the noisiness of returns in a given sample. We define an index of signal strength, or information accumulation, by renormalizing the signal-noise ratio. The novelty of our parameterization is that this index explicitly influences rate...
We examine predictive return regressions from a new angle. We ask what observ-able univariate proper...
Predictive regressions are a widely used econometric environment for assessing the predictability of...
While the traditional $R^{2}$ value is useful to evaluate the quality of a fit, it does not work wh...
Suppose that the equity premium is forecasted by dividend yields. Even if such a relationship does e...
Predictive regressions are linear specifications linking a noisy variable such as stock returns to p...
The thesis consists of three chapters dealing with predictability in equity markets. The first chapt...
Predictive regressions are linear specifications linking a noisy variable such as stock returns to p...
The thesis consists of three chapters dealing with predictability in equity markets. The first chapt...
Predictive regressions are linear specifications linking a noisy variable such as stock returns to p...
Predictive regressions are linear specifications linking a noisy variable such as stock returns to p...
Predictive regressions are linear specifications linking a noisy variable such as stock returns to p...
If returns are not predictable, dividend growth must be predictable, to generate the observed variat...
We develop tests for detecting possibly episodic predictability induced by a persistent predictor. O...
<p>We develop tests for detecting possibly episodic predictability induced by a persistent predictor...
We develop tests for detecting possibly episodic predictability induced by a persistent predictor. O...
We examine predictive return regressions from a new angle. We ask what observ-able univariate proper...
Predictive regressions are a widely used econometric environment for assessing the predictability of...
While the traditional $R^{2}$ value is useful to evaluate the quality of a fit, it does not work wh...
Suppose that the equity premium is forecasted by dividend yields. Even if such a relationship does e...
Predictive regressions are linear specifications linking a noisy variable such as stock returns to p...
The thesis consists of three chapters dealing with predictability in equity markets. The first chapt...
Predictive regressions are linear specifications linking a noisy variable such as stock returns to p...
The thesis consists of three chapters dealing with predictability in equity markets. The first chapt...
Predictive regressions are linear specifications linking a noisy variable such as stock returns to p...
Predictive regressions are linear specifications linking a noisy variable such as stock returns to p...
Predictive regressions are linear specifications linking a noisy variable such as stock returns to p...
If returns are not predictable, dividend growth must be predictable, to generate the observed variat...
We develop tests for detecting possibly episodic predictability induced by a persistent predictor. O...
<p>We develop tests for detecting possibly episodic predictability induced by a persistent predictor...
We develop tests for detecting possibly episodic predictability induced by a persistent predictor. O...
We examine predictive return regressions from a new angle. We ask what observ-able univariate proper...
Predictive regressions are a widely used econometric environment for assessing the predictability of...
While the traditional $R^{2}$ value is useful to evaluate the quality of a fit, it does not work wh...