This paper proposes a novel approach to solve the ordinal regression problem using Gaussian processes. The proposed approach, probabilistic least squares ordinal regression (PLSOR), obtains the probability distribution over ordinal labels using a particular likelihood function. It performs model selection (hyperparameter optimization) using the leave-one-out cross-validation (LOO-CV) technique. PLSOR has conceptual simplicity and ease of implementation of least squares approach. Unlike the existing Gaussian process ordinal regression (GPOR) approaches, PLSOR does not use any approximation techniques for inference. We compare the proposed approach with the state-of-the-art GPOR approaches on some synthetic and benchmark data sets. Experiment...
The statistical properties of a novel approach to ordinal regression which was only recently introdu...
Modeling and predicting of ordinal outcomes have become essential study to many statisticians due to...
Literature on the models for ordinal variables grew very fast in the last decades and several propos...
We present a probabilistic kernel approach to ordinal regression based on Gaussian processes. A thr...
This paper proposes a sparse modeling approach to solve ordinal regression problems using Gaussian p...
This paper proposes a sparse modeling approach to solve ordinal regression problems using Gaussian p...
The partial least squares (PLS) is a popular path modeling technique commonly used in social science...
Qualitative but ordered random variables, such as severity of a pathology, are of paramount importan...
We present a prediction method for ordinal partial least squares and ordinal consistent partial leas...
The partial least squares (PLS) is a popular modeling technique commonly used in social sciences. Th...
A regression model is proposed for the analysis of an ordinal response variable depending on a set o...
Recently, ordinal regression, which predicts categories of ordinal scale, has received considerable ...
This paper considers the fitting, criticism and comparison of three ordinal regression models -- the...
In this chapter, we present a new variance-based estimator called ordinal consistent partial least s...
This paper provides a brief review of commonly used statistical methods for analyses of ordinal resp...
The statistical properties of a novel approach to ordinal regression which was only recently introdu...
Modeling and predicting of ordinal outcomes have become essential study to many statisticians due to...
Literature on the models for ordinal variables grew very fast in the last decades and several propos...
We present a probabilistic kernel approach to ordinal regression based on Gaussian processes. A thr...
This paper proposes a sparse modeling approach to solve ordinal regression problems using Gaussian p...
This paper proposes a sparse modeling approach to solve ordinal regression problems using Gaussian p...
The partial least squares (PLS) is a popular path modeling technique commonly used in social science...
Qualitative but ordered random variables, such as severity of a pathology, are of paramount importan...
We present a prediction method for ordinal partial least squares and ordinal consistent partial leas...
The partial least squares (PLS) is a popular modeling technique commonly used in social sciences. Th...
A regression model is proposed for the analysis of an ordinal response variable depending on a set o...
Recently, ordinal regression, which predicts categories of ordinal scale, has received considerable ...
This paper considers the fitting, criticism and comparison of three ordinal regression models -- the...
In this chapter, we present a new variance-based estimator called ordinal consistent partial least s...
This paper provides a brief review of commonly used statistical methods for analyses of ordinal resp...
The statistical properties of a novel approach to ordinal regression which was only recently introdu...
Modeling and predicting of ordinal outcomes have become essential study to many statisticians due to...
Literature on the models for ordinal variables grew very fast in the last decades and several propos...