A truly human-centred approach to Machine Learning (ML) must consider how to support people modelling phenomena beyond those receiving the bulk of industry and academic attention, including phenomena relevant only to niche communities and for which large datasets may never exist. While deep feature learning is often viewed as a panacea that obviates the task of feature engineering, it may be insufficient to support users with small datasets, novel data sources, and unusual learning problems. We argue that it is therefore necessary to investigate how to support users who are not ML experts in deriving suitable feature representations for new ML problems. We also report on the results of a preliminary study comparing user-driven and automated...
Machine learning is a powerful tool for transformingdata into computational models that can driveuse...
Machine learning seems to offer the solution to many problems in user modelling. However, one tends ...
When intelligent interfaces, such as intelligent desktop assistants, email classifiers, and recommen...
A truly human-centred approach to Machine Learning (ML) must consider how to support people modellin...
Machine learning is one of the most important and successful techniques in contemporary computer sci...
Current Machine Learning (ML) models can make predictions that are as good as or better than those m...
In order to improve the performance of any machine learning model, it is important to focus more on ...
Learning is needed when there is no human expertise existing or when human beings are unable to expl...
Understanding artificial intelligence (AI) and machine learning (ML) approaches is becoming increasi...
This paper examines how designers can be supported in creating a new genera-tion of interactive mach...
Feature engineering—developing a set of values that effec-tively describe raw data for a machine lea...
Machine Learning (ML) requires a certain number of features (i.e., attributes) to train the model. O...
In the past, machine learning applications were mostly developed and deployed in specialist situatio...
Intelligent user interfaces, such as recommender systems and email classifiers, use machine learning...
Features play a crucial role in several computational tasks. Feature values are input to machine lea...
Machine learning is a powerful tool for transformingdata into computational models that can driveuse...
Machine learning seems to offer the solution to many problems in user modelling. However, one tends ...
When intelligent interfaces, such as intelligent desktop assistants, email classifiers, and recommen...
A truly human-centred approach to Machine Learning (ML) must consider how to support people modellin...
Machine learning is one of the most important and successful techniques in contemporary computer sci...
Current Machine Learning (ML) models can make predictions that are as good as or better than those m...
In order to improve the performance of any machine learning model, it is important to focus more on ...
Learning is needed when there is no human expertise existing or when human beings are unable to expl...
Understanding artificial intelligence (AI) and machine learning (ML) approaches is becoming increasi...
This paper examines how designers can be supported in creating a new genera-tion of interactive mach...
Feature engineering—developing a set of values that effec-tively describe raw data for a machine lea...
Machine Learning (ML) requires a certain number of features (i.e., attributes) to train the model. O...
In the past, machine learning applications were mostly developed and deployed in specialist situatio...
Intelligent user interfaces, such as recommender systems and email classifiers, use machine learning...
Features play a crucial role in several computational tasks. Feature values are input to machine lea...
Machine learning is a powerful tool for transformingdata into computational models that can driveuse...
Machine learning seems to offer the solution to many problems in user modelling. However, one tends ...
When intelligent interfaces, such as intelligent desktop assistants, email classifiers, and recommen...