Searching for authors named "Ashutosh Garg" – sorted by Relevance.
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Understanding Probabilistic Classifiers
- To appear in ECML'01 Understanding Probabilistic Classifiers Ashutosh Garg and Dan Roth
- Cited by 14 (1 self) – Add To MetaCart
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Learning Coherent Concepts
- SUBMITTED LEARNING COHERENT CONCEPTS Ashutosh Garg, Dan Roth Department of Computer Science
- Cited by 4 (4 self) – Add To MetaCart
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Margin distribution and learning algorithms
- Margin Distribution and Learning Algorithms Ashutosh Garg ASHUTOSH@(email omitted); IBM Almaden Research
- Cited by 4 (1 self) – Add To MetaCart
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Adaptive Learning Algorithm for SVM Applied to Feature Tracking
- of pattern recognition in mind. As such, a database is used to train the SVMs Ashutosh Garg, Ira Cohen
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- , Beijing, China PATENTS FILED 1. Vladimir Pavlovic, Ashutosh Garg and Simon Kasif, “A Bayesian framework
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Generalization bounds for linear learning algorithms
- Submitted Generalization Bounds for Linear Learning Algorithms Ashutosh Garg Sariel Har-Peled Dan
- Cited by 1 (1 self) – Add To MetaCart
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On Generalization Bounds, Projection Profile, and Margin Distribution
- On generalization bounds, projection prole, and margin distribution Ashutosh Garg Sariel Har
- Cited by 3 (2 self) – Add To MetaCart
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Multimodal Speaker Detection using Error Feedback Dynamic Bayesian Networks
- Design and development of novel human-computer interfaces poses a challenging problem: actions and intentions of users have to be inferred from sequences of noisy and ambiguous multi-sensory data such as video and sound. Temporal fusion of multiple sensors has been efficiently formulated using dynam
- Cited by 26 (5 self) – Add To MetaCart
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Audio-Visual Speaker Detection using Dynamic Bayesian Networks
- The development of human-computer interfaces poses a challenging problem: actions and intentions of different users have to be inferred from sequences of noisy and ambiguous sensory data. Temporal fusion of multiple sensors can be efficiently formulated using dynamic Bayesian networks (DBNs). DBN fr
- Cited by 14 (4 self) – Add To MetaCart
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Fusion of global and local information for object detection
- Fusion of Global and Local Information for Object Detection Ashutosh Garg , Shivani Agarwal
- Cited by 12 (0 self) – Add To MetaCart

