Статья
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Markov K., Ryazanov V., Velychko V., Aslanyan L. New Trends in Classification and Data Mining
ITHEA ® Материалы конференции, частично рус. яз.
Sofia, Bulgaria, 2010
ISBN 978-954-16-0042-9

This book maintains articles on actual problems of classification, data mining and forecasting as well as natural language processing:
- new approaches, models, algorithms and methods for classification, forecasting and clusterisation. Classification of non complete and noise data;
- discrete optimization in logic recognition algorithms construction, complexity, asymptotically optimal algorithms, mixed-integer problem of minimization of empirical risk, multi-objective linear integer programming problems;
- questions of complexity of some discrete optimization tasks and corresponding tasks of data analysis and patte recognition;
- the algebraic approach for patte recognition - problems of correct classification algorithms construction, logical correctors and resolvability of challenges of classification, construction of optimum algebraic correctors over sets of algorithms of computation of
estimations, conditions of correct algorithms existence;
- regressions, restoring of dependences according to training sampling, parametrical approach for piecewise linear dependences restoration, and nonparametric regressions based on collective solution on set of tasks of recognition;
- multi-agent systems in knowledge discovery, collective evolutionary systems, advantages and disadvantages of synthetic data mining methods, intelligent search agent model realizing information extraction on ontological model of data mining methods;
- methods of search of logic regularities sets of classes and extraction of optimal subsets, construction of convex combination of associated predictors that minimizes mean error;
- algorithmic constructions in a model of recognizing the nearest neighbors in binary data sets, discrete isoperimetry problem solutions, logic-combinatorial scheme in high-throughput gene expression data;
- researches in area of neural network classifiers, and applications in finance field;
- text mining, automatic classification of scientific papers, information extraction from natural language texts, semantic text analysis, natural language processing.

It is represented that book articles will be interesting as experts in the field of classifying, data mining and forecasting, and to practical users from medicine, sociology, economy, chemistry, biology, and other areas.

TABLE OF CONTENT
Preface 
Table of Content
Index of Authors 

Minimization of Empirical Risk in Linear Classifier Problem 
Yurii I. Zhuravlev, Yury Laptin, Alexander Vinogradov 

Restoring  of  Dependences  on  Samplings  of  Precedents  with  Usage  of  Models  of 
Recognition 
V.V.Ryazanov, Ju.I.Tkachev 

Composite Block Optimized Classification Data Structures 
Levon Aslanyan, Hasmik Sahakyan

Synthesis of Corrector Family with High Recogniti

Methods for Evaluating of Regularities Systems Structure 
Kostomarova Irina,  Kuznetsova Anna, Malygina Natalia, Senko Oleg 

Growing Support Set Systems in Analysis of High?Throughput Gene Expression Data 
Arsen Arakelyan, Anna Boyajian, Hasmik Sahakyan, 
Levon Aslanyan, Krassimira Ivanova, Iliya Mitov 

On the Complexity of Search for Conjunctive Rules in Recognition Problems 
Elena Djukova, Vladimir Nefedov 

Optimal Forecasting Based on Convexcorrecting Procedures 
Oleg Senko, Alexander Dokukin

Reference?Neighbourhood Scalarization for Multiobjective Integer Linear Programming 
Problems 
Krassimira Genova, Mariana Vassileva 

Multiagent Applications in Security Systems: New Proposals and Perspectives 
Vladimir Jotsov 

Numeric?Lingual Distinguishing Features of Scientific Documents 
Vladimir Lovitskii, Ina Markova, Krassimir Markov, Ilia Mitov 
 
Data and Metadata Exchange Repository Using Agents Implementation 
Tetyana Shatovska, Iryna Kamenieva 

LSPL?Pattes as a Tool for Information Extraction From Natural Language Texts 
Elena Bolshakova, Natalia Efremova, Alexey Noskov 

Computer  Support  of  Semantic  Text  Analysis  of  a  Technical  Specification  on  Designing 
Software 
Alla V. Zaboleeva?Zotova, Yulia A. Orlova 

Linguistics Research and Analysis of the Bulgarian Folklore. Experimental Implementation 
of Linguistic Components in Bulgarian Folklore Digital Library 
Konstantin Rangochev, Maxim Goynov,  Desislava Paneva?Marinova, Detelin Luchev 
 
Natural Interface to Election Data 
Elena Long, Vladimir Lovitskii, Michael Thrasher 

Analysis of Natural Language Objects 
Oleksii Vasylenko

Базовые  структуры  евклидовых  пространств:  конструктивные  методы  описания  и 
использования 
Владимир Донченко, Юрий Кривонос, Виктория Омардибирова 

Нейросетевая архитектура на частичных обучениях 
Николай Мурга

Разработка  автоматизированной  процедуры  совмещения  изображений 
произведений живописи в видимом И рентгеновском спектральных диапазонах 
Дмитрий Мурашов

Распознавание обектов с неполной информацией и искаженных преобразованиями 
из заданной группы в рамках логико?предметной распознающей системы 
Татьяна Косовская
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