Various machine learning techniques exist to perform regression on temporal data with concept drift occurring. However, there are numerous nonstationary environments where these techniques may fail to either track or detect the changes. This study develops a genetic programming-based predictive model for temporal data with a numerical target that tracks changes in a dataset due to concept drift. When an environmental change is evident, the proposed algorithm reacts to the change by clustering the data and then inducing nonlinear models that describe generated clusters. Nonlinear models become terminal nodes of genetic programming model trees. Experiments were carried out using seven nonstationary datasets and the obtained results suggest th...
In many domains such as telecommunications, finance and sensor monitoring, large volumes of unlabel...
Stock market prediction is of immense interest to trading companies and buyers due to high profit ma...
Genetic programming (GP), a relatively new evolutionary technique, is demonstrated in this study to ...
Genetic programming (GP) uses the Darwinian principle of survival of the fittest and sexual recombin...
Genetic Programming (GP) has proved its applicability for time series forecasting in a number of stu...
Finding patterns such as increasing or decreasing trends, abrupt changes and periodically repeating ...
The original publication is available at www.springerlink.comSeveral studies have applied genetic pr...
Soft methods of artificial intelligence are often used in the prediction of non-deterministic time s...
In this paper, we propose an unsupervised learning framework based on Genetic Programming (GP) to pr...
Most forecasting algorithms use a physical time scale for studying price movement in financial marke...
The last ten years has seen the introduction and rapid growth of a market in weather derivatives, fi...
This thesis describes a novel technique for learning predictive models from nondeterministic spatio-...
The main objective of this study is to present a two-step approach to generate estimates of economic...
This paper addresses the task of learning concept descriptions from streams of data. As new data are...
Wind speed and its direction at two offshore locations along the west coast of India are predicted o...
In many domains such as telecommunications, finance and sensor monitoring, large volumes of unlabel...
Stock market prediction is of immense interest to trading companies and buyers due to high profit ma...
Genetic programming (GP), a relatively new evolutionary technique, is demonstrated in this study to ...
Genetic programming (GP) uses the Darwinian principle of survival of the fittest and sexual recombin...
Genetic Programming (GP) has proved its applicability for time series forecasting in a number of stu...
Finding patterns such as increasing or decreasing trends, abrupt changes and periodically repeating ...
The original publication is available at www.springerlink.comSeveral studies have applied genetic pr...
Soft methods of artificial intelligence are often used in the prediction of non-deterministic time s...
In this paper, we propose an unsupervised learning framework based on Genetic Programming (GP) to pr...
Most forecasting algorithms use a physical time scale for studying price movement in financial marke...
The last ten years has seen the introduction and rapid growth of a market in weather derivatives, fi...
This thesis describes a novel technique for learning predictive models from nondeterministic spatio-...
The main objective of this study is to present a two-step approach to generate estimates of economic...
This paper addresses the task of learning concept descriptions from streams of data. As new data are...
Wind speed and its direction at two offshore locations along the west coast of India are predicted o...
In many domains such as telecommunications, finance and sensor monitoring, large volumes of unlabel...
Stock market prediction is of immense interest to trading companies and buyers due to high profit ma...
Genetic programming (GP), a relatively new evolutionary technique, is demonstrated in this study to ...