In the machine learning literature, it is commonly accepted as fact that as calibration sample sizes increase, Na ve Bayes classifiers initially outperform Logistic Regression classifiers in terms of classification accuracy. Applied to subtests from an on-line final examination and from a highly regarded certification examination, this study shows that the conclusion also applies to the probabilities estimated from short subtests of mental abilities and that small samples can yield excellent accuracy. The calculated Bayes probabilities can be used to provide meaningful examinee feedback regardless of whether the test was originally designed to be unidimensional
Adding confidence measures to predictive models should increase the trustworthiness, but only if the...
Adding confidence measures to predictive models should increase the trustworthiness, but only if the...
Bayes’ rule is introduced as a coherent strategy for multiple recomputations of classifier system ou...
In the machine learning literature, it is commonly accepted as fact that as calibration sample sizes...
The naïve Bayes classifier is a simple form of Bayesian classifiers which assumes all the features a...
The naïve Bayes classifier is considered one of the most effective classification algorithms today, ...
<p>Our solution outperforms the five Machine Learning approaches we have considered within our exper...
Despite its simplicity, the naïve Bayes learning scheme performs well on most classification tasks, ...
This paper examines the use of the beta-binomial distribution to predict true mastery following a cr...
Developers and users of educational and psychological tests often have the desire to report scores f...
In safety-critical applications a probabilistic model is usually required to be calibrated, i.e., to...
<p>Training set and test set errors are shown for each combination of type of distribution of data a...
The Bayes error rate gives a statistical lower bound on the error achievable for a given classificat...
Various ways of estimating probabilities, mainly within the Bayesian framework, are discussed. Their...
Most neuropsychologists are aware that, given the specificity and sensitivity of a test and an estim...
Adding confidence measures to predictive models should increase the trustworthiness, but only if the...
Adding confidence measures to predictive models should increase the trustworthiness, but only if the...
Bayes’ rule is introduced as a coherent strategy for multiple recomputations of classifier system ou...
In the machine learning literature, it is commonly accepted as fact that as calibration sample sizes...
The naïve Bayes classifier is a simple form of Bayesian classifiers which assumes all the features a...
The naïve Bayes classifier is considered one of the most effective classification algorithms today, ...
<p>Our solution outperforms the five Machine Learning approaches we have considered within our exper...
Despite its simplicity, the naïve Bayes learning scheme performs well on most classification tasks, ...
This paper examines the use of the beta-binomial distribution to predict true mastery following a cr...
Developers and users of educational and psychological tests often have the desire to report scores f...
In safety-critical applications a probabilistic model is usually required to be calibrated, i.e., to...
<p>Training set and test set errors are shown for each combination of type of distribution of data a...
The Bayes error rate gives a statistical lower bound on the error achievable for a given classificat...
Various ways of estimating probabilities, mainly within the Bayesian framework, are discussed. Their...
Most neuropsychologists are aware that, given the specificity and sensitivity of a test and an estim...
Adding confidence measures to predictive models should increase the trustworthiness, but only if the...
Adding confidence measures to predictive models should increase the trustworthiness, but only if the...
Bayes’ rule is introduced as a coherent strategy for multiple recomputations of classifier system ou...