Memory-Assisted Dynamic Multi-Objective Evolutionary Algorithm for Feature Drift Problem
Künye
SAHMOUD, Shaaban & Haluk Rahmi TOPÇUOĞLU. "Memory-Assisted Dynamic Multi-Objective Evolutionary Algorithm for Feature Drift Problem". IEEE Congress on Evolutionary Computation (CEC), 2020.Özet
In this paper, we propose an enhanced feature
selection algorithm able to cope with feature drift problem
that may occur in data streams, where the set of relevant
features change over time. We utilize a dynamic multi-objective
evolutionary algorithm to continuously search for the updated
set of relevant features after the occurrence of every change in
the environment. An artificial neural network is employed to
classify the new instances based on the up-to-date obtained set
of relevant features efficiently. Our algorithm exploits a detection
mechanism for the severity of changes to estimate the severity
level of occurred changes and adaptively replies to these changes
by introducing diversity to algorithm solutions. Furthermore,
a fixed-size memory is used to store the good solutions and
reuse them after each change to accelerate the convergence and
searching process of the algorithm. The experimental results
using three datasets and different environmental parameters
show that the combination of our improved feature selection
algorithm with the artificial neural network outperforms related
work.