Traditionally the machine learning community has viewed the No Free Lunch (NFL) theorems for search and optimization as a limitation. I review, analyze, and unify the NFL theorem with the many frameworks to arrive at necessary conditions for improving black-box optimization, model selection, and machine learning in general. I review meta-learning literature to determine when and how meta-learning can benefit machine learning. We generalize meta-learning, in context of the NFL theorems, to arrive at a novel technique called Anti-Training with Sacrificial Data (ATSD). My technique applies at the meta level to arrive at domain specific algorithms and models. I also show how to generate sacrificial data. An extensive case study is presented alo...
Day by day, machine learning is changing our lives in ways we could not have imagined just 5 years a...
Meta-learning, or learning to learn, is the science of systematically observing how different machin...
Machine Learning (ML) broadly encompasses a variety of adaptive, autonomous, and intelligent tasks w...
A sizable amount of research has been done to improve the mechanisms for knowledge extraction such a...
The No Free Lunch (NFL) Theorem imposes a theoretical restriction on optimization algorithms and the...
Classical optimization techniques have found widespread use in machine learning. Convex optimization...
International audienceDuring the past few years, research in applying machine learning (ML) to desig...
In the last years, organizations and companies in general have found the true potential value of col...
The No Free Lunch (NFL) theorem for search and optimisation states that averaged across all possible...
In order to make predictions with high accuracy, conventional deep learning systems require large tr...
[...] Thus not only our reason fails us in the discovery of the ultimate connexion of causes and eff...
Machine learning deals with programs that learn from experience, i.e. programs that improve or adapt...
International audienceMeta-learning tackles various means of learning from past tasks to perform new...
International audienceThis paper addresses a cornerstone of Automated Machine Learning: the problem ...
In today's rapidly evolving technological landscape, the development and advancement of computationa...
Day by day, machine learning is changing our lives in ways we could not have imagined just 5 years a...
Meta-learning, or learning to learn, is the science of systematically observing how different machin...
Machine Learning (ML) broadly encompasses a variety of adaptive, autonomous, and intelligent tasks w...
A sizable amount of research has been done to improve the mechanisms for knowledge extraction such a...
The No Free Lunch (NFL) Theorem imposes a theoretical restriction on optimization algorithms and the...
Classical optimization techniques have found widespread use in machine learning. Convex optimization...
International audienceDuring the past few years, research in applying machine learning (ML) to desig...
In the last years, organizations and companies in general have found the true potential value of col...
The No Free Lunch (NFL) theorem for search and optimisation states that averaged across all possible...
In order to make predictions with high accuracy, conventional deep learning systems require large tr...
[...] Thus not only our reason fails us in the discovery of the ultimate connexion of causes and eff...
Machine learning deals with programs that learn from experience, i.e. programs that improve or adapt...
International audienceMeta-learning tackles various means of learning from past tasks to perform new...
International audienceThis paper addresses a cornerstone of Automated Machine Learning: the problem ...
In today's rapidly evolving technological landscape, the development and advancement of computationa...
Day by day, machine learning is changing our lives in ways we could not have imagined just 5 years a...
Meta-learning, or learning to learn, is the science of systematically observing how different machin...
Machine Learning (ML) broadly encompasses a variety of adaptive, autonomous, and intelligent tasks w...