New Evolutionary Computation Models and their Applications to Machine Learning
Mihai Oltean

TL;DR
This paper introduces new evolutionary computation models aimed at automating software development through machine learning, addressing current limitations in human-driven programming and proposing a nature-inspired approach.
Contribution
It presents novel evolutionary computation models specifically designed for machine learning applications in automatic programming, advancing beyond existing methods.
Findings
New models demonstrate improved efficiency in generating software solutions.
Models outperform traditional approaches in certain benchmark tasks.
The approach reduces human effort in software development.
Abstract
Automatic Programming is one of the most important areas of computer science research today. Hardware speed and capability have increased exponentially, but the software is years behind. The demand for software has also increased significantly, but it is still written in old fashion: by using humans. There are multiple problems when the work is done by humans: cost, time, quality. It is costly to pay humans, it is hard to keep them satisfied for a long time, it takes a lot of time to teach and train them and the quality of their output is in most cases low (in software, mostly due to bugs). The real advances in human civilization appeared during the industrial revolutions. Before the first revolution, most people worked in agriculture. Today, very few percent of people work in this field. A similar revolution must appear in the computer programming field. Otherwise, we will have…
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Taxonomy
TopicsEvolutionary Algorithms and Applications · Metaheuristic Optimization Algorithms Research · Reinforcement Learning in Robotics
