One of the key problems in supervised learning is the insufficient size of the training set. The natural way for an intelligent learner to counter this problem and successfully generalize is to exploit prior information that may be available about the domain or that can be learned from prototypical examples. We discuss the notion of using prior knowledge by creating virtual examples and thereby expanding the effective training set size. We show that in some contexts, this idea is mathematically equivalent to incorporating the prior knowledge as a regularizer, suggesting that the strategy is well-motivated. The process of creating virtual examples in real world pattern recognition tasks is highly non-trivial. We provide demonstrative example...
The purpose of the research presented in this dissertation is to improve virtual reality (VR) traini...
When dealing with real-world problems, there is considerable amount of prior domain knowledge that c...
AbstractThis paper extends traditional models of machine learning beyond their one-level structure b...
Machine Learning (ML) has been a transformative technology in society by automating otherwise diffic...
Domain knowledge captures an expert’s approximate understanding of the world, its objects, and their...
Deep learning allows to develop feature representations and train classification models in a fully i...
Open ended learning is a dynamic process based on the continuous analysis of new data, guided by pas...
What is the best way to exploit extra data -- be it unlabeled data from the same task, or labeled da...
For many tasks such as text categorization and control of robotic systems, state-of-the art learning...
AbstractWe present a systematic method for incorporating prior knowledge (hints) into the learning-f...
The main idea of a priori machine learning is to apply a machine learning method on a machine learni...
Prior knowledge about a problem domain can be utilized to bias Support Vector Machines (SVMs) toward...
Knowledge distillation (KD) has shown very promising capabilities in transferring learning represent...
We investigate the teaching of infinite concept classes through the effect of the learning prior (wh...
Hybrid learning methods use theoretical knowledge of a domain and a set of classified examples to de...
The purpose of the research presented in this dissertation is to improve virtual reality (VR) traini...
When dealing with real-world problems, there is considerable amount of prior domain knowledge that c...
AbstractThis paper extends traditional models of machine learning beyond their one-level structure b...
Machine Learning (ML) has been a transformative technology in society by automating otherwise diffic...
Domain knowledge captures an expert’s approximate understanding of the world, its objects, and their...
Deep learning allows to develop feature representations and train classification models in a fully i...
Open ended learning is a dynamic process based on the continuous analysis of new data, guided by pas...
What is the best way to exploit extra data -- be it unlabeled data from the same task, or labeled da...
For many tasks such as text categorization and control of robotic systems, state-of-the art learning...
AbstractWe present a systematic method for incorporating prior knowledge (hints) into the learning-f...
The main idea of a priori machine learning is to apply a machine learning method on a machine learni...
Prior knowledge about a problem domain can be utilized to bias Support Vector Machines (SVMs) toward...
Knowledge distillation (KD) has shown very promising capabilities in transferring learning represent...
We investigate the teaching of infinite concept classes through the effect of the learning prior (wh...
Hybrid learning methods use theoretical knowledge of a domain and a set of classified examples to de...
The purpose of the research presented in this dissertation is to improve virtual reality (VR) traini...
When dealing with real-world problems, there is considerable amount of prior domain knowledge that c...
AbstractThis paper extends traditional models of machine learning beyond their one-level structure b...