The purpose of this paper is to propose and evaluate a method for reducing the inherent tendency of genetic programming to overfit small and noisy data sets. In addition, the use of different optimization criteria for symbolic regression is demonstrated. The key idea is to reduce the risk of overfitting noise in the training data by introducing an intermediate predictive model in the process. More specifically, instead of directly evolving a genetic regression model based on labeled training data, the first step is to generate a highly accurate ensemble model. Since ensembles are very robust, the resulting predictions will contain less noise than the original data set. In the second step, an interpretable model is evolved, using the ensembl...
Most highly accurate predictive modeling techniques produce opaque models. When comprehensible model...
In this study we examine different methodologies to estimate earnings. More specifically, we evalua...
The last ten years has seen the introduction and rapid growth of a market in weather derivatives, fi...
The purpose of this paper is to propose and evaluate a method for reducing the inherent tendency of ...
It is important for a retail company to forecast its sale in correct and accurate way to be ableto p...
A common problem when using complicated models for prediction and classification is that the complex...
When performing predictive data mining, the use of ensembles is claimed to virtually guarantee incre...
Sales forecasting is important in production and supply chain management. It affects firms’ planning...
The use of decision rules and estimation techniques is increasingly common for decision mak-ing. In ...
Recent studies in finance domain suggest that technical analysis may have merit to predictability of...
When performing predictive data mining, the use of ensembles is claimed to virtually guarantee incre...
If we want to finding investment opportunities in the financial markets, financial forecasting is go...
Stock market prediction is of immense interest to trading companies and buyers due to high profit ma...
This thesis introduces various machine learning algorithms which can be used in prediction tasks bas...
When learning from high-dimensional data for symbolic regression (SR), genetic programming (GP) typi...
Most highly accurate predictive modeling techniques produce opaque models. When comprehensible model...
In this study we examine different methodologies to estimate earnings. More specifically, we evalua...
The last ten years has seen the introduction and rapid growth of a market in weather derivatives, fi...
The purpose of this paper is to propose and evaluate a method for reducing the inherent tendency of ...
It is important for a retail company to forecast its sale in correct and accurate way to be ableto p...
A common problem when using complicated models for prediction and classification is that the complex...
When performing predictive data mining, the use of ensembles is claimed to virtually guarantee incre...
Sales forecasting is important in production and supply chain management. It affects firms’ planning...
The use of decision rules and estimation techniques is increasingly common for decision mak-ing. In ...
Recent studies in finance domain suggest that technical analysis may have merit to predictability of...
When performing predictive data mining, the use of ensembles is claimed to virtually guarantee incre...
If we want to finding investment opportunities in the financial markets, financial forecasting is go...
Stock market prediction is of immense interest to trading companies and buyers due to high profit ma...
This thesis introduces various machine learning algorithms which can be used in prediction tasks bas...
When learning from high-dimensional data for symbolic regression (SR), genetic programming (GP) typi...
Most highly accurate predictive modeling techniques produce opaque models. When comprehensible model...
In this study we examine different methodologies to estimate earnings. More specifically, we evalua...
The last ten years has seen the introduction and rapid growth of a market in weather derivatives, fi...