Knowledge-based classification and regression methods are especially powerful forms of learning. They allow a system to take advantage of prior domain knowledge supplied either by a human user or another algorithm, combining that knowledge with data to produce accurate models. A limitation of the use of prior knowledge occurs when the provided knowledge is incorrect. Such knowledge likely still contains useful information, but knowledge-based learners might not be able to fully exploit such information. In fact, incorrect knowledge can lead to poorer models than result from knowledge-free learners. We present a support-vector method for incorporating and refining domain knowledge that not only allows the learner to make use of that knowledg...
An easy-to-follow introduction to support vector machines. This book provides an in-depth, easy-to-f...
The learning using privileged information paradigm has allowed support vector machine models to inco...
We believe one of the most promising but under-explored research areas in machine learning today is ...
We propose a simple mechanism for incorporating ad-vice (prior knowledge), in the form of simple rul...
Prior knowledge about a problem domain can be utilized to bias Support Vector Machines (SVMs) toward...
DARPA. Abstract. KBSVMs incorporate advice from domain experts to improve generalization. Imperfect ...
Prior knowledge in the form of multiple polyhedral sets, each be-longing to one of two categories, i...
Since their introduction more than a decade ago, support vector machines (SVMs) have shown good perf...
If appropriately used, prior knowledge can significantly improve the predictive accuracy of learning...
AbstractIn many real-world classification problems, we are not only given the traditional training s...
It-s known that incorporating prior knowledge into support vector regression (SVR) can help to impro...
We introduce a class of linear programs with constraints in the form of implications. Such linear pr...
AbstractPrior knowledge in the form of multiple polyhedral sets or more general nonlinear sets was i...
It-s known that incorporating prior knowledge into support vector regression (SVR) can help to impro...
135 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2005.We also present the compariso...
An easy-to-follow introduction to support vector machines. This book provides an in-depth, easy-to-f...
The learning using privileged information paradigm has allowed support vector machine models to inco...
We believe one of the most promising but under-explored research areas in machine learning today is ...
We propose a simple mechanism for incorporating ad-vice (prior knowledge), in the form of simple rul...
Prior knowledge about a problem domain can be utilized to bias Support Vector Machines (SVMs) toward...
DARPA. Abstract. KBSVMs incorporate advice from domain experts to improve generalization. Imperfect ...
Prior knowledge in the form of multiple polyhedral sets, each be-longing to one of two categories, i...
Since their introduction more than a decade ago, support vector machines (SVMs) have shown good perf...
If appropriately used, prior knowledge can significantly improve the predictive accuracy of learning...
AbstractIn many real-world classification problems, we are not only given the traditional training s...
It-s known that incorporating prior knowledge into support vector regression (SVR) can help to impro...
We introduce a class of linear programs with constraints in the form of implications. Such linear pr...
AbstractPrior knowledge in the form of multiple polyhedral sets or more general nonlinear sets was i...
It-s known that incorporating prior knowledge into support vector regression (SVR) can help to impro...
135 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2005.We also present the compariso...
An easy-to-follow introduction to support vector machines. This book provides an in-depth, easy-to-f...
The learning using privileged information paradigm has allowed support vector machine models to inco...
We believe one of the most promising but under-explored research areas in machine learning today is ...