Sampling strategies which have very significant role on examining data characteristics (i.e. imbalanced, small, exhaustive) have been discussed in the literature for the last couple decades. In this study, the sampling problem encountered on small and continuous data sets is examined. Sampling with measured data by employing k-fold cross validation, and sampling with synthetic data generated by fuzzy c-means clustering are applied, and then the performances of genetic programming (GP) and adaptive neuro fuzzy inference system (ANFIS) on these data sets are discussed. Concluding remarks are that when the experimental results are considered, fuzzy c-means based synthetic sampling is more successful than k-fold cross validation while modeling ...
[[abstract]]Over the past few decades, a few learning algorithms have been proposed to extract knowl...
Adaptive Neuro Fuzzy Inference System(ANFIS) yaitu metode yang menggabungkan metode-metode yang ada ...
Abstract — Multicriteria genetic algorithms can produce fuzzy models with a good balance between the...
Sampling strategies which have very significant role on examining data characteristics (i.e. imbalan...
This work investigates the use of sampling methods in Genetic Programming (GP) to improve the classi...
in Advances in Intelligent Systems and Computing, vol. 529The amount of available data for data mini...
This work aims at enabling online optimization and control of computationally expensive models by em...
Major assumptions in computational intelligence and machine learning consist of the availability of ...
Abstract Novel neuro-fuzzy techniques are used to dynamically control parameter settings of genetic ...
Equally partitioned data are essential for prediction. However, in some important cases, the data di...
: Equally partitioned data is essential for prediction. However, in some important cases, the data d...
In many real-world environments, a genetic algorithm designer is often faced with choosing the best ...
The application of machine learning and soft computing techniques for function approximation is a wi...
The ability to generalize beyond the training set is important for Genetic Programming (GP). Interle...
Although genome scans have become a popular approach towards understanding the genetic basis of loca...
[[abstract]]Over the past few decades, a few learning algorithms have been proposed to extract knowl...
Adaptive Neuro Fuzzy Inference System(ANFIS) yaitu metode yang menggabungkan metode-metode yang ada ...
Abstract — Multicriteria genetic algorithms can produce fuzzy models with a good balance between the...
Sampling strategies which have very significant role on examining data characteristics (i.e. imbalan...
This work investigates the use of sampling methods in Genetic Programming (GP) to improve the classi...
in Advances in Intelligent Systems and Computing, vol. 529The amount of available data for data mini...
This work aims at enabling online optimization and control of computationally expensive models by em...
Major assumptions in computational intelligence and machine learning consist of the availability of ...
Abstract Novel neuro-fuzzy techniques are used to dynamically control parameter settings of genetic ...
Equally partitioned data are essential for prediction. However, in some important cases, the data di...
: Equally partitioned data is essential for prediction. However, in some important cases, the data d...
In many real-world environments, a genetic algorithm designer is often faced with choosing the best ...
The application of machine learning and soft computing techniques for function approximation is a wi...
The ability to generalize beyond the training set is important for Genetic Programming (GP). Interle...
Although genome scans have become a popular approach towards understanding the genetic basis of loca...
[[abstract]]Over the past few decades, a few learning algorithms have been proposed to extract knowl...
Adaptive Neuro Fuzzy Inference System(ANFIS) yaitu metode yang menggabungkan metode-metode yang ada ...
Abstract — Multicriteria genetic algorithms can produce fuzzy models with a good balance between the...