Ensemble classification and regression-recent developments, applications and future directions
Y Ren, L Zhang, PN Suganthan - IEEE Computational …, 2016 - ieeexplore.ieee.org
Ensemble methods use multiple models to get better performance. Ensemble methods have
been used in multiple research fields such as computational intelligence, statistics and …
been used in multiple research fields such as computational intelligence, statistics and …
Learning classifier systems: a complete introduction, review, and roadmap
RJ Urbanowicz, JH Moore - Journal of Artificial Evolution and …, 2009 - Wiley Online Library
If complexity is your problem, learning classifier systems (LCSs) may offer a solution. These
rule‐based, multifaceted, machine learning algorithms originated and have evolved in the …
rule‐based, multifaceted, machine learning algorithms originated and have evolved in the …
Genetic neural network based data mining in prediction of heart disease using risk factors
Data mining techniques have been widely used in clinical decision support systems for
prediction and diagnosis of various diseases with good accuracy. These techniques have …
prediction and diagnosis of various diseases with good accuracy. These techniques have …
Evolving diverse ensembles using genetic programming for classification with unbalanced data
In classification, machine learning algorithms can suffer a performance bias when data sets
are unbalanced. Data sets are unbalanced when at least one class is represented by only a …
are unbalanced. Data sets are unbalanced when at least one class is represented by only a …
A convolutional neural-based learning classifier system for detecting database intrusion via insider attack
Role-based access control (RBAC) in databases provides a valuable level of abstraction to
promote security administration at the business enterprise level. With the capacity for …
promote security administration at the business enterprise level. With the capacity for …
Reverse engineering the neural networks for rule extraction in classification problems
MG Augasta, T Kathirvalavakumar - Neural processing letters, 2012 - Springer
Artificial neural networks often achieve high classification accuracy rates, but they are
considered as black boxes due to their lack of explanation capability. This paper proposes …
considered as black boxes due to their lack of explanation capability. This paper proposes …
A review of rule learning-based intrusion detection systems and their prospects in smart grids
Q Liu, V Hagenmeyer, HB Keller - IEEE Access, 2021 - ieeexplore.ieee.org
Intrusion detection systems (IDS) are commonly categorized into misuse based, anomaly
based and specification based IDS. Both misuse based IDS and anomaly based IDS are …
based and specification based IDS. Both misuse based IDS and anomaly based IDS are …
An automated artificial neural network system for land use/land cover classification from Landsat TM imagery
H Yuan, CF Van Der Wiele, S Khorram - Remote Sensing, 2009 - mdpi.com
This paper focuses on an automated ANN classification system consisting of two modules:
an unsupervised Kohonen's Self-Organizing Mapping (SOM) neural network module, and a …
an unsupervised Kohonen's Self-Organizing Mapping (SOM) neural network module, and a …
Auto iv: Counterfactual prediction via automatic instrumental variable decomposition
Instrumental variables (IVs), sources of treatment randomization that are conditionally
independent of the outcome, play an important role in causal inference with unobserved …
independent of the outcome, play an important role in causal inference with unobserved …
Reusing building blocks of extracted knowledge to solve complex, large-scale boolean problems
Evolutionary computation techniques have had limited capabilities in solving large-scale
problems due to the large search space demanding large memory and much longer training …
problems due to the large search space demanding large memory and much longer training …