When dealing with real-world problems, there is considerable amount of prior domain knowledge that can provide insights on various aspect of the problem. On the other hand, many machine learning methods rely solely on the data sets for their learning phase and do not take into account any explicitly expressed domain knowledge. This paper proposes a framework that investigates and enables the incorporation of prior domain knowledge with respect to three key characteristics of inductive machine learning algorithms: consistency, generalization and convergence. The framework is used to review, classify and analyse key existing approaches to incorporating domain knowledge into inductive machine learning, as well as to consider the risks of doing...
In this chapter we introduce basic concepts and ideas of the Support Vector Machines (SVM). In the f...
A crucial issue in designing learning machines is to select the correct model parameters. When the n...
Support Vector Machine (SVM) learning from imbalanced datasets, as well as most learning machines, c...
When dealing with real-world problems, there is considerable amount of prior domain knowledge that c...
Prior knowledge about a problem domain can be utilized to bias Support Vector Machines (SVMs) toward...
University of Technology, Sydney. Faculty of Information Technology.An ideal inductive machine learn...
In cases of extremely imbalanced dataset with high dimensions, standard machine learning techniques ...
Learning is obtaining an underlying rule by using training data sampled from the environment. In man...
This thesis presents a theoretical and practical study of Support Vector Machines (SVM) and related ...
We believe one of the most promising but under-explored research areas in machine learning today is ...
As real-world databases increase in size, there is a need to scale up inductive learning algorithms...
International audienceDesigning Machine Learning algorithms implies to answer three main questions: ...
Abstract- Support Vector Machines tend to perform better when dealing with multi-dimensions and cont...
Abstract. Incorporation of prior knowledge into the learning process can significantly improve low-s...
Since their introduction more than a decade ago, support vector machines (SVMs) have shown good perf...
In this chapter we introduce basic concepts and ideas of the Support Vector Machines (SVM). In the f...
A crucial issue in designing learning machines is to select the correct model parameters. When the n...
Support Vector Machine (SVM) learning from imbalanced datasets, as well as most learning machines, c...
When dealing with real-world problems, there is considerable amount of prior domain knowledge that c...
Prior knowledge about a problem domain can be utilized to bias Support Vector Machines (SVMs) toward...
University of Technology, Sydney. Faculty of Information Technology.An ideal inductive machine learn...
In cases of extremely imbalanced dataset with high dimensions, standard machine learning techniques ...
Learning is obtaining an underlying rule by using training data sampled from the environment. In man...
This thesis presents a theoretical and practical study of Support Vector Machines (SVM) and related ...
We believe one of the most promising but under-explored research areas in machine learning today is ...
As real-world databases increase in size, there is a need to scale up inductive learning algorithms...
International audienceDesigning Machine Learning algorithms implies to answer three main questions: ...
Abstract- Support Vector Machines tend to perform better when dealing with multi-dimensions and cont...
Abstract. Incorporation of prior knowledge into the learning process can significantly improve low-s...
Since their introduction more than a decade ago, support vector machines (SVMs) have shown good perf...
In this chapter we introduce basic concepts and ideas of the Support Vector Machines (SVM). In the f...
A crucial issue in designing learning machines is to select the correct model parameters. When the n...
Support Vector Machine (SVM) learning from imbalanced datasets, as well as most learning machines, c...