B Pes, N Dessì, M Angioni - Information fusion, 2017 - Elsevier
Ensemble classification is a well-established approach that involves fusing the decisions of multiple predictive models. A similar “ensemble logic” has been recently applied to …
Univariate feature rankers have been frequently used to order genes (features) in terms of their importance to a given bioinformatics challenge. Unfortunately, the resulting feature …
Dimensionality reduction techniques have become a required step when working with bioinformatics datasets. Techniques such as feature selection have been known to not only …
Feature selection is an important preprocessing step when learning from bioinformatics datasets. Since these datasets often have high dimensionality (a large number of features) …
Finding a good predictive model for a high‐dimensional data set can be challenging. For genetic data, it is not only important to find a model with high predictive accuracy, but it is …
Feature (gene) selection is an important preprocessing step for performing data mining on large-scale bioinformatics datasets. However, one known concern is that feature selection …
Abstract Study Objectives Heart rate variability (HRV)-based machine learning models hold promise for real-world vigilance evaluation, yet their real-time applicability is limited by …
One of the more prevalent problems when working with bioinformatics datasets is class imbalance, when there are more instances in one class compared to the other class (es) …
Ensemble feature selection has recently become a topic of interest for researchers, especially in the area of bioinformatics. The benefits of ensemble feature selection include …