At first blush, user modeling appears to be a prime candidate for straightforward application of standard machine learning techniques. Observations of the user\u27s behavior can provide training examples that a machine learning system can use to form a model designed to predict future actions. However, user modeling poses a number of challenges for machine learning that have hindered its application in user modeling, including: the need for large data sets; the need for labeled data; concept drift; and computational complexity. This paper examines each of these issues and reviews approaches to resolving them.<br /
We describe two applications that use rated text documents to induce a model of the user's inte...
For intelligent interactive systems to communicate with humans in a natural manner, they must have k...
For intelligent interactive systems to communicate with humans in a natural manner, they must have k...
Machine learning seems to offer the solution to many problems in user modelling. However, one tends ...
User Modeling and Machine Learning for User Modeling have both become important research topics and ...
In this paper we discuss how machine learning, and specifically how naive Bayes classifiers, can be...
In human-in-the-loop machine learning, the user provides information beyond that in the training dat...
Abstract. The long and winding road of user modeling is grounded in different epistemological assump...
Modeling has actively tried to take the human out of the loop, originally for objectivity and recent...
Personalising user models has gained considerable attention in recent literature. In an information-...
This paper is intended as guidance for those who are familiar with user modeling field but are less ...
Traditional approaches to developing user models, especially for computer-based learning environmen...
User Modeling and Machine Learning for User Modeling have both become important research topics and ...
Machine Learning seems to offer the solution to the central problem in recommender systems: Learning...
Traditional approaches to developing user models, especially for computer-based learning environment...
We describe two applications that use rated text documents to induce a model of the user's inte...
For intelligent interactive systems to communicate with humans in a natural manner, they must have k...
For intelligent interactive systems to communicate with humans in a natural manner, they must have k...
Machine learning seems to offer the solution to many problems in user modelling. However, one tends ...
User Modeling and Machine Learning for User Modeling have both become important research topics and ...
In this paper we discuss how machine learning, and specifically how naive Bayes classifiers, can be...
In human-in-the-loop machine learning, the user provides information beyond that in the training dat...
Abstract. The long and winding road of user modeling is grounded in different epistemological assump...
Modeling has actively tried to take the human out of the loop, originally for objectivity and recent...
Personalising user models has gained considerable attention in recent literature. In an information-...
This paper is intended as guidance for those who are familiar with user modeling field but are less ...
Traditional approaches to developing user models, especially for computer-based learning environmen...
User Modeling and Machine Learning for User Modeling have both become important research topics and ...
Machine Learning seems to offer the solution to the central problem in recommender systems: Learning...
Traditional approaches to developing user models, especially for computer-based learning environment...
We describe two applications that use rated text documents to induce a model of the user's inte...
For intelligent interactive systems to communicate with humans in a natural manner, they must have k...
For intelligent interactive systems to communicate with humans in a natural manner, they must have k...