Abstract: The quality and quantity (we call it suitability from now on) of data that are used for a machine learning task are as important as the capability of the machine learning algorithm itself. Yet these two aspects of machine learning are not given equal weight by the data mining, machine learning and neural computing communities. Data suitability is largely ignored compared to the effort expended on learning algorithm development. This position paper argues that some of the new algorithms and many of the tweaks to existing algorithms would be unnecessary if the data going into them were properly pre-processed, and calls for a shift in effort towards data suitability assessment and correction.
While machine learning is traditionally a resource intensive task, embedded systems, autonomous navi...
In the era of big data, profitable opportunities are becoming available for many applications. As th...
Supervised machine learning has found its way into ever more areas of scientific inquiry, where the ...
The quality and quantity (we call it suitability from now on) of data that are used for a machine le...
In many machine learning applications, one uses pre-trained neural networks, having limited access t...
Determining the optimal amount of training data for machine learning algorithms is a critical task i...
Supervised Machine Learning (ML) requires that smart algorithms scrutinize a very large number of la...
The world today is on revolution 4.0 which is data-driven. The majority of organizations and systems...
Advances in artificial intelligence and machine learning have begun a revolution in the understandin...
Machine Learning is a branch of artificial intelligence focused on building applications that learn ...
Applying machine learning to real problems is non-trivial because many important steps are needed to...
suggests a reasonable line of research: find algorithms that can search the hypothesis class better....
Machine learning algorithms detects patterns, regularities, and rules from the training data and adj...
Over the past decade, deep learning has pro- foundly transformed the landscape of science and tech-...
Recent world events in go games between human and artificial intelligence called AlphaGo showed the ...
While machine learning is traditionally a resource intensive task, embedded systems, autonomous navi...
In the era of big data, profitable opportunities are becoming available for many applications. As th...
Supervised machine learning has found its way into ever more areas of scientific inquiry, where the ...
The quality and quantity (we call it suitability from now on) of data that are used for a machine le...
In many machine learning applications, one uses pre-trained neural networks, having limited access t...
Determining the optimal amount of training data for machine learning algorithms is a critical task i...
Supervised Machine Learning (ML) requires that smart algorithms scrutinize a very large number of la...
The world today is on revolution 4.0 which is data-driven. The majority of organizations and systems...
Advances in artificial intelligence and machine learning have begun a revolution in the understandin...
Machine Learning is a branch of artificial intelligence focused on building applications that learn ...
Applying machine learning to real problems is non-trivial because many important steps are needed to...
suggests a reasonable line of research: find algorithms that can search the hypothesis class better....
Machine learning algorithms detects patterns, regularities, and rules from the training data and adj...
Over the past decade, deep learning has pro- foundly transformed the landscape of science and tech-...
Recent world events in go games between human and artificial intelligence called AlphaGo showed the ...
While machine learning is traditionally a resource intensive task, embedded systems, autonomous navi...
In the era of big data, profitable opportunities are becoming available for many applications. As th...
Supervised machine learning has found its way into ever more areas of scientific inquiry, where the ...