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Dive into the research topics where Nikita A. Sakhanenko is active.

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Featured researches published by Nikita A. Sakhanenko.


International Journal of Modern Physics C | 2006

SHOCK PHYSICS DATA RECONSTRUCTION USING SUPPORT VECTOR REGRESSION

Nikita A. Sakhanenko; George F. Luger; Hanna E. Makaruk; Joysree B. Aubrey; David B. Holtkamp

This paper considers a set of shock physics experiments that investigate how materials respond to the extremes of deformation, pressure, and temperature when exposed to shock waves. Due to the complexity and the cost of these tests, the available experimental data set is often very sparse. A support vector machine (SVM) technique for regression is used for data estimation of velocity measurements from the underlying experiments. Because of good generalization performance, the SVM method successfully interpolates the experimental data. The analysis of the resulting velocity surface provides more information on the physical phenomena of the experiment. Additionally, the estimated data can be used to identify outlier data sets, as well as to increase the understanding of the other data from the experiment.


International Journal on Artificial Intelligence Tools | 2009

PREDICTIONS AND DIAGNOSTICS IN EXPERIMENTAL DATA USING SUPPORT VECTOR REGRESSION

Nikita A. Sakhanenko; George F. Luger; Hanna E. Makaruk; David B. Holtkamp

In this paper we present a novel support vector machine (SVM) based framework for prognosis and diagnosis. We apply the framework to sparse physics data sets, although the method can easily be extended to other domains. Experiments in applied fields, such as experimental physics, are often complicated and expensive. As a result, experimentalists are unable to conduct as many experiments as they would like, leading to very unbalanced data sets that can be dense in one dimension and very sparse in others. Our method predicts the data values along the sparse dimension providing more information to researchers. Often experiments deviate from expectations due to small misalignments in initial parameters. Our method detects these outlier experiments.


the florida ai research society | 2007

Managing Dynamic Contexts Using Failure-Driven Stochastic Models

Nikita A. Sakhanenko; George F. Luger; Carl R. Stern


the florida ai research society | 2008

A New Approach to Model-Based Diagnosis Using Probabilistic Logic.

Nikita A. Sakhanenko; Roshan Rammohan; George F. Luger; Carl R. Stern


arXiv: Software Engineering | 2005

Systematic Method for Path-Complete White Box Testing

Hanna E. Makaruk; Robert Owczarek; Nikita A. Sakhanenko


Journal of Computer Science and Technology | 2010

Model failure and context switching using logic-based stochastic

Nikita A. Sakhanenko; George F. Luger


Archive | 2008

Using Structured Knowledge Representation for Context-Sensitive Probabilistic Modeling

Nikita A. Sakhanenko; George F. Luger


indian international conference on artificial intelligence | 2007

A Context-Partitioned Stochastic Modeling System with Causally Informed Context Management and Model Induction.

Nikita A. Sakhanenko; Roshan Rammohan; George F. Luger; Carl R. Stern


arXiv: Artificial Intelligence | 2006

Application of Support Vector Regression to Interpolation of Sparse Shock Physics Data Sets

Nikita A. Sakhanenko; George F. Luger; Hanna E. Makaruk; David B. Holtkamp


Lecture Notes in Computer Science | 2003

Automatic generation of generalization lemmas for proving properties of tail-recursive definitions

Deepak Kapur; Nikita A. Sakhanenko

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Hanna E. Makaruk

Los Alamos National Laboratory

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Carl R. Stern

Los Alamos National Laboratory

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David B. Holtkamp

Los Alamos National Laboratory

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Deepak Kapur

University of New Mexico

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Joysree B. Aubrey

Los Alamos National Laboratory

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Robert Owczarek

Polish Academy of Sciences

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