[[abstract]]Machine learning has been proven useful for solving the bottlenecks in building expert systems. Noise in the training instances will, however, confuse a learning mechanism. Two main steps are adopted here to solve this problem. The first step is to appropriately arrange the training order of the instances. It is well known from Psychology that different orders of presentation of the same set of training instances to a human may cause different learning results. This idea is used here for machine learning and an order arrangement scheme is proposed. The second step is to modify a conventional noise-free learning algorithm, thus making it suitable for noisy environment. The generalized version space learning algorithm is then adop...
Over the past few decades, machine learning (ML) algorithms have become a very useful tool ...
This dissertation develops and analyzes active learning algorithms for binary classification problem...
In many domains, collecting sufficient labeled training data for supervised machine learning require...
Abstract—This paper generalizes the learning strategy of version space to manage noisy and uncertain...
[[abstract]]This paper generalizes the learning strategy of version space to manage noisy and uncert...
Arguably the most popular application task in artificial intelligence is image classification using ...
The nearest neighbor algorithm and its derivatives are often quite successful at learning a concept ...
In myriad of human-tailored activities, whether in the classroom or listening to a story, human lear...
Supervised learning algorithms make several simplifying assumptions concerning the characteristics o...
Learning in natural environments is often characterized by a degree of inconsistency from an input. ...
Probably the most important problem in machine learning is the preliminary biasing of a learner&apos...
This thesis presents a new theory of generalization in neural network types of learning machines. Th...
We introduce a new approach to the training of classifiers for performance on multiple tasks. The pr...
We investigate the generalisation performance of consistent classifiers, i.e. classifiers that are c...
venkateshGee.upenn.edu This paper presents a rigorous characterization of how a general nonlinear le...
Over the past few decades, machine learning (ML) algorithms have become a very useful tool ...
This dissertation develops and analyzes active learning algorithms for binary classification problem...
In many domains, collecting sufficient labeled training data for supervised machine learning require...
Abstract—This paper generalizes the learning strategy of version space to manage noisy and uncertain...
[[abstract]]This paper generalizes the learning strategy of version space to manage noisy and uncert...
Arguably the most popular application task in artificial intelligence is image classification using ...
The nearest neighbor algorithm and its derivatives are often quite successful at learning a concept ...
In myriad of human-tailored activities, whether in the classroom or listening to a story, human lear...
Supervised learning algorithms make several simplifying assumptions concerning the characteristics o...
Learning in natural environments is often characterized by a degree of inconsistency from an input. ...
Probably the most important problem in machine learning is the preliminary biasing of a learner&apos...
This thesis presents a new theory of generalization in neural network types of learning machines. Th...
We introduce a new approach to the training of classifiers for performance on multiple tasks. The pr...
We investigate the generalisation performance of consistent classifiers, i.e. classifiers that are c...
venkateshGee.upenn.edu This paper presents a rigorous characterization of how a general nonlinear le...
Over the past few decades, machine learning (ML) algorithms have become a very useful tool ...
This dissertation develops and analyzes active learning algorithms for binary classification problem...
In many domains, collecting sufficient labeled training data for supervised machine learning require...