In this paper we discuss how machine learning, and specifically how naive Bayes classifiers, can be used for user modeling tasks. We argue that in general, machine learning techniques should be used to improve a user modeling system's interactions with users. We further argue that a naive Bayes classifier is a reasonable approach to many user modeling problems, given its advantages of quick learning and low computational overhead. These are critical features for an online user modeling system. We discuss two such user modeling systems and how this technique can be applied to them. Finally, we propose a set of enhancements to naive Bayes classifiers to improve their predictive accuracy, and allow them to better adapt to the user...
Machine Learning is a field of computer science that learns from data by studying algorithms and the...
Naïve Bayes classifiers, a popular tool for predicting the labels of query instances, are typically ...
Traditional approaches to developing user models, especially for computer-based learning environment...
Machine learning seems to offer the solution to many problems in user modelling. However, one tends ...
We describe two applications that use rated text documents to induce a model of the user's inte...
At first blush, user modeling appears to be a prime candidate for straightforward application of sta...
According to standard procedure, building a classifier is a fully automated process that follows dat...
In human-in-the-loop machine learning, the user provides information beyond that in the training dat...
This is Naive Bayes Classifier based on Maximum Likelihood Estimation. The first model is to handle ...
User profiles can serve as indicators of personal preferences which can be effectively used while pr...
According to standard procedure, building a classier using machine learning is a fully automated pro...
This paper introduces the basics of classification and machine learning, as well as building an appl...
Traditional approaches to developing user models, especially for computer-based learning environmen...
The naïve Bayes classifier is a simple form of Bayesian classifiers which assumes all the features a...
According to standard procedure, building a classi er is a fully automated process that follows data...
Machine Learning is a field of computer science that learns from data by studying algorithms and the...
Naïve Bayes classifiers, a popular tool for predicting the labels of query instances, are typically ...
Traditional approaches to developing user models, especially for computer-based learning environment...
Machine learning seems to offer the solution to many problems in user modelling. However, one tends ...
We describe two applications that use rated text documents to induce a model of the user's inte...
At first blush, user modeling appears to be a prime candidate for straightforward application of sta...
According to standard procedure, building a classifier is a fully automated process that follows dat...
In human-in-the-loop machine learning, the user provides information beyond that in the training dat...
This is Naive Bayes Classifier based on Maximum Likelihood Estimation. The first model is to handle ...
User profiles can serve as indicators of personal preferences which can be effectively used while pr...
According to standard procedure, building a classier using machine learning is a fully automated pro...
This paper introduces the basics of classification and machine learning, as well as building an appl...
Traditional approaches to developing user models, especially for computer-based learning environmen...
The naïve Bayes classifier is a simple form of Bayesian classifiers which assumes all the features a...
According to standard procedure, building a classi er is a fully automated process that follows data...
Machine Learning is a field of computer science that learns from data by studying algorithms and the...
Naïve Bayes classifiers, a popular tool for predicting the labels of query instances, are typically ...
Traditional approaches to developing user models, especially for computer-based learning environment...