It is difficult if not impossible to appropriately and effectively select from among the vast pool of existing neural network machine learning predictive models for industrial incorporation or aca-demic research exploration and enhancement. When all models outperform all the others under disparate circumstances, none of the models do. Selecting the ideal model becomes a matter of ill-supported opinion ungrounded on the extant real world environment. This paper proposes a nov-el grouping of the model pool grounded along a non-stationary real world data line into two groups: Permanent Data Learning and Reversible Data Learning. This paper further proposes a novel approach towards qualitatively and quantitatively demonstrating their significan...
In a deregulating power market, bidding decisions rely on good market clearing price predictions. On...
In corporate data mining applications, cost-sensitive learning is firmly established for predictive ...
Artificial neural networks are empirical models which adjust their internal parameters, using a suit...
Machine learning techniques, such as neural networks and rule induction, are becoming popular altern...
Abstract — Companies have been collecting data for decades, building massive data warehouses in whic...
Data Mining accomplishes nontrivial extraction of implicit, previously unknown, and potentially usef...
Machine learning is a branch of artificial intelligence in which the system is made to learn from da...
ABSTRACT - Traditional statistical models as tools for summarizing patterns and regularities in obse...
Feed-forward Neural Networks, is a multilayer perceptron and a network structure capable of modellin...
Ideally, when a neural network makes a wrong decision or encounters an out-of-distribution example, ...
Data splitting is an important step in the artificial neural network (ANN) development process where...
The development of machine learning research has provided statistical innovations and further develo...
Although artificial neural networks have recently gained importance in time series applications, som...
Data mining a multidisciplinary field, is an analytic process designed to explore data (typically bu...
Although artificial neural networks are occasionally used in forecasting future sales for manufactur...
In a deregulating power market, bidding decisions rely on good market clearing price predictions. On...
In corporate data mining applications, cost-sensitive learning is firmly established for predictive ...
Artificial neural networks are empirical models which adjust their internal parameters, using a suit...
Machine learning techniques, such as neural networks and rule induction, are becoming popular altern...
Abstract — Companies have been collecting data for decades, building massive data warehouses in whic...
Data Mining accomplishes nontrivial extraction of implicit, previously unknown, and potentially usef...
Machine learning is a branch of artificial intelligence in which the system is made to learn from da...
ABSTRACT - Traditional statistical models as tools for summarizing patterns and regularities in obse...
Feed-forward Neural Networks, is a multilayer perceptron and a network structure capable of modellin...
Ideally, when a neural network makes a wrong decision or encounters an out-of-distribution example, ...
Data splitting is an important step in the artificial neural network (ANN) development process where...
The development of machine learning research has provided statistical innovations and further develo...
Although artificial neural networks have recently gained importance in time series applications, som...
Data mining a multidisciplinary field, is an analytic process designed to explore data (typically bu...
Although artificial neural networks are occasionally used in forecasting future sales for manufactur...
In a deregulating power market, bidding decisions rely on good market clearing price predictions. On...
In corporate data mining applications, cost-sensitive learning is firmly established for predictive ...
Artificial neural networks are empirical models which adjust their internal parameters, using a suit...