Interactive Machine Learning (IML) seeks to complement human perception and intelligence by tightly integrating these strengths with the computational power and speed of computers. The interactive process is designed to involve input from the user but does not require the background knowledge or experience that might be necessary to work with more traditional machine learning techniques. Under the IML process, non-experts can apply their domain knowledge and insight over otherwise unwieldy datasets to find patterns of interest or develop complex data driven applications. This process is co-adaptive in nature and relies on careful management of the interaction between human and machine. User interface design is fundamental to the success of ...
End-user interactive machine learning is a promising tool for enhancing human productivity and capab...
Abstract. In this paper we examine the notion of adaptive user interfaces, interactive systems that ...
People regularly interact with human-in-the-loop learning (HiLL) agents that attempt to adapt to the...
Interactive Machine Learning (IML) seeks to complement human perception and intelligence by tightly ...
Intelligent systems that learn interactively from their end-users are quickly becoming widespread. U...
User interaction with intelligent systems need not be limited to interaction where pre-trained softw...
User interaction with intelligent systems need not be limited to interaction where pre-trained softw...
Thesis (Ph.D.)--University of Washington, 2012End-user interactive machine learning is a promising t...
This dissertation focuses on developing new machine learning models and algorithms for the task of l...
International audienceThe evaluation of interactive machine learning systems remains a difficult tas...
International audienceHuman-centered approaches to machine learning have established theoretical fou...
Interactive machine learning (IML) is a learning process in which a user interacts with a system to ...
Evènement affilié à PFIA 2022National audienceInteractive Machine Learning (IML) systems involve the...
In interactive machine learning, the learning machine is engaged in some fashion with an information...
End-user interactive machine learning is a promising tool for enhancing human productivity and capab...
End-user interactive machine learning is a promising tool for enhancing human productivity and capab...
Abstract. In this paper we examine the notion of adaptive user interfaces, interactive systems that ...
People regularly interact with human-in-the-loop learning (HiLL) agents that attempt to adapt to the...
Interactive Machine Learning (IML) seeks to complement human perception and intelligence by tightly ...
Intelligent systems that learn interactively from their end-users are quickly becoming widespread. U...
User interaction with intelligent systems need not be limited to interaction where pre-trained softw...
User interaction with intelligent systems need not be limited to interaction where pre-trained softw...
Thesis (Ph.D.)--University of Washington, 2012End-user interactive machine learning is a promising t...
This dissertation focuses on developing new machine learning models and algorithms for the task of l...
International audienceThe evaluation of interactive machine learning systems remains a difficult tas...
International audienceHuman-centered approaches to machine learning have established theoretical fou...
Interactive machine learning (IML) is a learning process in which a user interacts with a system to ...
Evènement affilié à PFIA 2022National audienceInteractive Machine Learning (IML) systems involve the...
In interactive machine learning, the learning machine is engaged in some fashion with an information...
End-user interactive machine learning is a promising tool for enhancing human productivity and capab...
End-user interactive machine learning is a promising tool for enhancing human productivity and capab...
Abstract. In this paper we examine the notion of adaptive user interfaces, interactive systems that ...
People regularly interact with human-in-the-loop learning (HiLL) agents that attempt to adapt to the...