Classification learning is dominated by systems which induce large numbers of small axis-orthogonal decision surfaces which biases such systems towards particular hypothesis types. However, there is reason to believe that many domains have underlying concepts which do not involve axis orthogonal surfaces. Further, the multiplicity of small decision regions mitigates against any holistic appreciation of the theories produced by these systems, notwithstanding the fact that many of the small regions are individually comprehensible. We propose the use of less strongly biased hypothesis languages which might be expected to model\u27 concepts using a number of structures close to the number of actual structures in the domain. An instantiation of ...
The success of deep neural networks in image classification and learning can be partly attributed to...
We consider the domain of non-empty convex andcompact subsets of a finite dimensional Euclidean spac...
The goal of machine learning is to build automated systems that can classify and recognize com-plex ...
The accuracy of classification and regression tasks based on data driven models, such as Neural Netw...
The demands of image processing related systems are robustness, high recognition rates, capability t...
From a broad perspective, we study issues related to implementation, testing, and experimentation in...
In this dissertation, the author has made an attempt to study the performance characteristics of var...
This paper introduces an efficient geometric approach for data classification that can build class m...
This paper explores error estimation in feed-forward neural network classifiers from a geometrical p...
summary:A method of geometrical characterization of multidimensional data sets, including constructi...
International audiencePattern mining is an important task in AI for eliciting hypotheses from the da...
Abstract Topology can be used to characterize the structure of objects invariant to changes in their...
We consider problems in model selection caused by the geometry of models close to their points of in...
Convex and concave hulls are useful concepts for a wide variety of application areas, such as patter...
Selecting suitable data for neural network training, out of a larger set, is an important task. For ...
The success of deep neural networks in image classification and learning can be partly attributed to...
We consider the domain of non-empty convex andcompact subsets of a finite dimensional Euclidean spac...
The goal of machine learning is to build automated systems that can classify and recognize com-plex ...
The accuracy of classification and regression tasks based on data driven models, such as Neural Netw...
The demands of image processing related systems are robustness, high recognition rates, capability t...
From a broad perspective, we study issues related to implementation, testing, and experimentation in...
In this dissertation, the author has made an attempt to study the performance characteristics of var...
This paper introduces an efficient geometric approach for data classification that can build class m...
This paper explores error estimation in feed-forward neural network classifiers from a geometrical p...
summary:A method of geometrical characterization of multidimensional data sets, including constructi...
International audiencePattern mining is an important task in AI for eliciting hypotheses from the da...
Abstract Topology can be used to characterize the structure of objects invariant to changes in their...
We consider problems in model selection caused by the geometry of models close to their points of in...
Convex and concave hulls are useful concepts for a wide variety of application areas, such as patter...
Selecting suitable data for neural network training, out of a larger set, is an important task. For ...
The success of deep neural networks in image classification and learning can be partly attributed to...
We consider the domain of non-empty convex andcompact subsets of a finite dimensional Euclidean spac...
The goal of machine learning is to build automated systems that can classify and recognize com-plex ...