This paper proposes a nonparametric predictive regression model. The unknown function modeling the predictive relationship is approximated using polynomial Taylor expansions applied over disjoint intervals covering the support of the predictor variable. The model is estimated using the theory on partitioning estimators that is extended to a stationary time series setting. We show pointwise and uniform convergence of the proposed estimator and derive its asymptotic normality. These asymptotic results are applied to test for the presence of predictive ability. We develop an asymptotic pointwise test of predictive ability using the critical values of a Normal distribution, and a uniform test with asymptotic distribution that is approximated us...
This paper studies a semiparametric single-index predictive regression model with multiple nonstatio...
We consider the problem of multistep-ahead prediction in time series analysis by using nonparametric...
Abstract. This paper introduces a parsimonious and yet flexible nonneg-ative semiparametric model to...
This article proposes a nonparametric predictive regression model. The unknown function modeling the...
We propose two new nonparametric predictive models: the multi-step nonparametric predictive regressi...
A unifying framework for inference is developed in predictive regressions where the predictor has un...
The paper proposes a class of nonlinear additive predictive regression models, which improve the lin...
Predicting the value of a variable Y corresponding to a future value of an ex-planatory variable X, ...
This dissertation concerns estimation and inference using partitioning-based least squares estimator...
Abstract. Predictive regression models are often used in finance to model stock returns as a functio...
The problem of predicting a future value of a time series is considered in this paper. If the series...
This paper considers the estimation of a semi-parametric single-index regression model that allows f...
We introduce a semiparametric procedure for more efficient prediction of a strictly stationaryproces...
A unifying framework for inference is developed in predictive regressions where the predictor has un...
This dissertation covers several topics in estimation and forecasting in time series models. Chapter...
This paper studies a semiparametric single-index predictive regression model with multiple nonstatio...
We consider the problem of multistep-ahead prediction in time series analysis by using nonparametric...
Abstract. This paper introduces a parsimonious and yet flexible nonneg-ative semiparametric model to...
This article proposes a nonparametric predictive regression model. The unknown function modeling the...
We propose two new nonparametric predictive models: the multi-step nonparametric predictive regressi...
A unifying framework for inference is developed in predictive regressions where the predictor has un...
The paper proposes a class of nonlinear additive predictive regression models, which improve the lin...
Predicting the value of a variable Y corresponding to a future value of an ex-planatory variable X, ...
This dissertation concerns estimation and inference using partitioning-based least squares estimator...
Abstract. Predictive regression models are often used in finance to model stock returns as a functio...
The problem of predicting a future value of a time series is considered in this paper. If the series...
This paper considers the estimation of a semi-parametric single-index regression model that allows f...
We introduce a semiparametric procedure for more efficient prediction of a strictly stationaryproces...
A unifying framework for inference is developed in predictive regressions where the predictor has un...
This dissertation covers several topics in estimation and forecasting in time series models. Chapter...
This paper studies a semiparametric single-index predictive regression model with multiple nonstatio...
We consider the problem of multistep-ahead prediction in time series analysis by using nonparametric...
Abstract. This paper introduces a parsimonious and yet flexible nonneg-ative semiparametric model to...