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ROBOT CONTROL USING INDUCTIVE, DEDUCTIVE AND CASE BASED REASONING
By: Agris Nikitenko
(3568 reads)
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(1.00/10)
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Abstract: The paper deals with a problem of intelligent system’s design for complex environments. There is
discussed a possibility to integrate several technologies into one basic structure that could form a kernel of an
autonomous intelligent robotic system. One alternative structure is proposed in order to form a basis of an
intelligent system that would be able to operate in complex environments.
The proposed structure is very flexible because of features that allow adapting via learning and adjustment of the
used knowledge. Therefore, the proposed structure may be used in environments with stochastic features such
as hardly predictable events or elements. The basic elements of the proposed structure have found their
implementation in software system and experimental robotic system. The software system as well as the robotic
system has been used for experimentation in order to validate the proposed structure - its functionality, flexibility
and reliability. Both of them are presented in the paper. The basic features of each system are presented as well.
The most important results of experiments are outlined and discussed at the end of the paper. Some possible
directions of further research are also sketched at the end of the paper.
Keywords: Artificial intelligence, Inductive reasoning, Deductive reasoning, Case based reasoning, Machine
learning, Learning algorithms.
ACM Classification Keywords: I.2.9 Robotics; I.2.3 Deduction and Theorem Proving: Deduction, Induction,
Uncertainty, Fuzzy, and Probabilistic Reasoning; I.2.6 Learning
Link:
ROBOT CONTROL USING INDUCTIVE, DEDUCTIVE AND CASE BASED REASONING
Agris Nikitenko
http://www.foibg.com/ijita/vol12/ijita12-4-p13.pdf
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NEURAL NETWORK BASED OPTIMAL CONTROL WITH CONSTRAINTS
By: Toshkova et al.
(3607 reads)
Rating:
(1.00/10)
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Abstract: In the present paper the problems of the optimal control of systems when constraints are imposed on
the control is considered. The optimality conditions are given in the form of Pontryagin’s maximum principle. The
obtained piecewise linear function is approximated by using feedforward neural network. A numerical example is
given.
Keywords: optimal control, constraints, neural networks
ACM Classification Keywords: I.2.8 Problem Solving, Control Methods, and Search
Link:
NEURAL NETWORK BASED OPTIMAL CONTROL WITH CONSTRAINTS
Daniela Toshkova, Georgi Toshkov, Todorka Kovacheva
http://www.foibg.com/ijita/vol14/ijita14-3-p11.pdf
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LOGICAL MODELS OF COMPOSITE DYNAMIC OBJECTS CONTROL
By: Velichko et al.
(3621 reads)
Rating:
(1.00/10)
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Abstract: The questions of designing multicriteria control systems on the basis of logic models of composite
dynamic objects are considered.
Keywords: control, logical model, composite dynamic object, balancing network.
ACM Classification Keywords: I.2.8 Problem Solving, Control Methods, and Search: Control theory; F.1.1 Models of Computation: Neural networks
Link:
LOGICAL MODELS OF COMPOSITE DYNAMIC OBJECTS CONTROL
Vitaly Velichko, Victor Gladun, Gleb Gladun, Anastasiya Godunova,
Yurii Ivaskiv, Elina Postol, Grigorii Jakemenko
http://www.foibg.com/ijita/vol12/ijita12-4-p01.pdf
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LIMIT BEHAVIOUR OF DYNAMIC RULE-BASED SYSTEMS
By: Gennady Osipov
(3655 reads)
Rating:
(1.00/10)
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Abstract: The paper suggests a classification of dynamic rule-based systems. For each class of systems, limit behavior is studied. Systems with stabilizing limit states or stabilizing limit trajectories are identified, and such states and trajectories are found. The structure of the set of limit states and trajectories is investigated.
Keywords: Dynamic rule-based systems, set of attainable states, limit trajectories.
ACM Classification Keywords: I.2.8 Problem Solving, Control Methods, and Search
Link:
LIMIT BEHAVIOUR OF DYNAMIC RULE-BASED SYSTEMS
Gennady Osipov
http://www.foibg.com/ijita/vol15/ijita15-2-p03.pdf
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ANALYSIS AND COORDINATION OF EXPERT STATEMENTS IN THE PROBLEMS ...
By: Lbov et al.
(3839 reads)
Rating:
(1.00/10)
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Abstract: The paper is devoted to the matter of information presented in a natural language search. The method
using the statements agreement process is added to the known existing system. It allows the formation of an
ordered list of answers to the inquiry in the form of quotations from the documents.
Keywords: Search engine, natural language, coordination of statements, semantic graph
ACM Classification Keywords: I.2.7 Computing Methodologies – Text analysis
Link:
ANALYSIS AND COORDINATION OF EXPERT STATEMENTS IN THE PROBLEMS OF INTELLECTUAL INFORMATION SEARCH1
Gennadiy Lbov, Nikolai Dolozov, Pavel Maslov
http://www.foibg.com/ijita/vol14/ijita14-1-p16.pdf
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SEMANTIC SEARCH OF INTERNET INFORMATION RESOURCES ON BASE OF ONTOLOGIES ...
By: Anatoly Gladun, Julia Rogushina
(3771 reads)
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(1.00/10)
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Abstract: the approaches to the analysis of various information resources pertinent to user requirements at a
semantic level are determined by the thesauruses of the appropriate subject domains. The algorithms of
formation and normalization of the multilinguistic thesaurus, and also methods of their comparison are given.
Key words: an information resource, ontology, thesaurus, informational retrieval.
ACM Classification Keywords: I.2.7 Natural Language Processing, I.2.4 Knowledge Representation
Formalisms and Methods (F.4.1).
Link:
SEMANTIC SEARCH OF INTERNET INFORMATION RESOURCES ON BASE OF ONTOLOGIES AND MULTILINGUISTIC THESAURUSES
Anatoly Gladun, Julia Rogushina
http://www.foibg.com/ijita/vol14/ijita14-1-p07.pdf
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INTELLIGENT SEARCH AND AUTOMATIC DOCUMENT CLASSIFICATION AND CATALOGING ...
By: Vyacheslav Lanin, Lyudmila Lyadova
(3881 reads)
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(1.00/10)
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Abstract: This paper presents an approach to development of intelligent search system and automatic document
classification and cataloging tools for CASE-system based on metadata. The described method uses advantages
of ontology approach and traditional approach based on keywords. The method has powerful intelligent means
and it can be integrated with existing document search systems.
Keywords: electronic document, automatic document classification and cataloging, ontology approach,
information system development.
ACM Classification Keywords: I.2.7 Artificial Intelligence: Natural Language Processing – Text analysis;
D.2.2 Software Engineering: Design Tools and Techniques – Computer-aided software engineering (CASE).
Link:
INTELLIGENT SEARCH AND AUTOMATIC DOCUMENT CLASSIFICATION AND CATALOGING BASED ON ONTOLOGY APPROACH
Vyacheslav Lanin, Lyudmila Lyadova
http://www.foibg.com/ijita/vol14/ijita14-1-p03.pdf
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VERBAL DIALOGUE VERSUS WRITTEN DIALOGUE
By: Burns et al.
(3688 reads)
Rating:
(1.00/10)
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Abstract: Modern technology has moved on and completely changed the way that people can use the telephone
or mobile to dialogue with information held on computers. Well developed “written speech analysis” does not work
with “verbal speech”. The main purpose of our article is, firstly, to highlights the problems and, secondly, to shows
the possible ways to solve these problems.
Keywords: data mining, speech recognition, natural language processing
ACM Classification Keywords: I.2.7 Natural Language Processing: Text analysis, speech recognition.
Link:
VERBAL DIALOGUE VERSUS WRITTEN DIALOGUE
David Burns, Richard Fallon, Phil Lewis, Vladimir Lovitskii, Stuart Owen
http://www.foibg.com/ijita/vol12/ijita12-4-p11.pdf
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INFORMATION PROCESSING IN A COGNITIVE MODEL OF NLP
By: Slavova et al.
(4035 reads)
Rating:
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Abstract: A model of the cognitive process of natural language processing has been developed using the
formalism of generalized nets. Following this stage-simulating model, the treatment of information inevitably
includes phases, which require joint operations in two knowledge spaces – language and semantics. In order to
examine and formalize the relations between the language and the semantic levels of treatment, the language is
presented as an information system, conceived on the bases of human cognitive resources, semantic primitives,
semantic operators and language rules and data. This approach is applied for modeling a specific grammatical
rule – the secondary predication in Russian. Grammatical rules of the language space are expressed as
operators in the semantic space. Examples from the linguistics domain are treated and several conclusions for
the semantics of the modeled rule are made. The results of applying the information system approach to the
language turn up to be consistent with the stages of treatment modeled with the generalized net.
Keywords: Cognitive model, Natural Language Processing, Generalized Net, Language Information System
ACM Classification Keywords: I.2.7 Natural Language Processing;
Link:
INFORMATION PROCESSING IN A COGNITIVE MODEL OF NLP
Velina Slavova, Alona Soschen, Luke Immes
http://www.foibg.com/ijita/vol12/ijita12-2-p08.pdf
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EXPERIMENTS IN DETECTION AND CORRECTION OF RUSSIAN MALAPROPISMS BY MEANS ...
By: Bolshakova et al.
(3762 reads)
Rating:
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Abstract: Malapropism is a semantic error that is hardly detectable because it usually retains syntactical links
between words in the sentence but replaces one content word by a similar word with quite different meaning. A
method of automatic detection of malapropisms is described, based on Web statistics and a specially defined
Semantic Compatibility Index (SCI). For correction of the detected errors, special dictionaries and heuristic rules
are proposed, which retains only a few highly SCI-ranked correction candidates for the user’s selection.
Experiments on Web-assisted detection and correction of Russian malapropisms are reported, demonstrating
efficacy of the described method.
Keywords: semantic error, malapropism, error correction, Web-assisted error detection, paronymy dictionaries,
correction candidates, Semantic Compatibility Index.
ACM Classification Keywords: I.2.7 Artificial Intelligence: Natural language processing – Text analysis
Link:
EXPERIMENTS IN DETECTION AND CORRECTION OF RUSSIAN MALAPROPISMS BY MEANS OF THE WEB
Elena Bolshakova, Igor Bolshakov, Alexey Kotlyarov
http://www.foibg.com/ijita/vol12/ijita12-2-p06.pdf
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COMMON SCIENTIFIC LEXICON FOR AUTOMATIC DISCOURSE ANALYSIS OF SCIENTIFIC ...
By: Elena Bolshakova
(4765 reads)
Rating:
(1.00/10)
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Abstract: The paper reports on preliminary results of an ongoing research aiming at development of an
automatic procedure for recognition of discourse-compositional structure of scientific and technical texts, which is
required in many NLP applications. The procedure exploits as discourse markers various domain-independent
words and expressions that are specific for scientific and technical texts and organize scientific discourse. The
paper discusses features of scientific discourse and common scientific lexicon comprising such words and
expressions. Methodological issues of development of a computer dictionary for common scientific lexicon are
concerned; basic principles of its organization are described as well. Main steps of the discourse-analyzing
procedure based on the dictionary and surface syntactical analysis are pointed out.
- The work is supported by the grant № 06-01-00571 of Russian Fond of Fundamental Researches (RFFI).
International Journal "Information Theories & Applications" Vol.15 / 2008
190
Keywords: scientific and technical prose, common scientific words and expressions, discourse markers, scientific
discourse operations, discourse-compositional analysis.
ACM Classification Keywords: I.2.7 Artificial Intelligence: Natural language processing – Text analysis
Link:
COMMON SCIENTIFIC LEXICON FOR AUTOMATIC DISCOURSE ANALYSIS OF SCIENTIFIC AND TECHNICAL TEXTS *
Elena Bolshakova
http://www.foibg.com/ijita/vol15/ijita15-2-p15.pdf
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SEARCHING FOR NEAREST STRINGS WITH NEURAL-LIKE STRING EMBEDDING
By: Artem Sokolov
(3964 reads)
Rating:
(1.00/10)
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Abstract: We analyze an approach to a similarity preserving coding of symbol sequences based on neural
distributed representations and show that it can be viewed as a metric embedding process.
Keywords sequence similarity, edit distance, metric embeddings, distributed representations, neural networks
ACM Classification Keywords: I.2.6 Connectionism and neural nets, E.m Miscellaneous
Link:
SEARCHING FOR NEAREST STRINGS WITH NEURAL-LIKE STRING EMBEDDING
Artem Sokolov
http://www.foibg.com/ijita/vol14/ijita14-3-p16.pdf
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MEASURE REFUTATIONS AND METRICS ON STATEMENTS OF EXPERTS ...
By: Alexander Vikent’ev
(3843 reads)
Rating:
(1.00/10)
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Abstract. The paper discusses a logical expert statements represented as the formulas with probabilities of the
first order language consistent with some theory T. Theoretical-models methods for setting metrics on such
statements are offered. Properties of metrics are investigated. The research allows solve problems of the best
reconciliation of expert statements, constructions of decision functions in pattern recognition, creations the bases
of knowledge and development of expert systems.
Keywords: pattern recognition, distance between experts’ statements.
ACM Classification Keywords: I.2.6. Artificial Intelligence - Knowledge Acquisition.
Link:
MEASURE REFUTATIONS AND METRICS ON STATEMENTS OF EXPERTS (LOGICAL FORMULAS) IN THE MODELS FOR SOME THEORY1
Alexander Vikent’ev
http://www.foibg.com/ijita/vol14/ijita14-1-p15.pdf
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GROWING NEURAL NETWORKS USING NONCONVENTIONAL ACTIVATION FUNCTIONS
By: Bodyanskiy et al.
(3899 reads)
Rating:
(1.00/10)
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Abstract: In the paper, an ontogenic artificial neural network (ANNs) is proposed. The network uses orthogonal
activation functions that allow significant reducing of computational complexity. Another advantage is numerical
stability, because the system of activation functions is linearly independent by definition. A learning procedure for
proposed ANN with guaranteed convergence to the global minimum of error function in the parameter space is
developed. An algorithm for structure network structure adaptation is proposed. The algorithm allows adding or
deleting a node in real-time without retraining of the network. Simulation results confirm the efficiency of the
proposed approach.
Keywords: ontogenic artificial neural network, orthogonal activation functions, time-series forecasting.
ACM Classification Keywords: I.2.6 Learning – Connectionism and neural nets
Link:
GROWING NEURAL NETWORKS USING NONCONVENTIONAL ACTIVATION FUNCTIONS
Yevgeniy Bodyanskiy, Iryna Pliss, Oleksandr Slipchenko
http://www.foibg.com/ijita/vol14/ijita14-3-p13.pdf
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CONSTRUCTING OF A CONSENSUS OF SEVERAL EXPERTS STATEMENTS∗
By: Gennadiy Lbov, Maxim Gerasimov
(3738 reads)
Rating:
(1.00/10)
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Abstract: Let Γ be a population of elements or objects concerned by the problem of recognition. By assumption,
some experts give probabilistic predictions of unknown belonging classes γ of objects a∈Γ , being already
aware of their description X (a) . In this paper, we present a method of aggregating sets of individual statements
into a collective one using distances / similarities between multidimensional sets in heterogeneous feature space.
Keywords: pattern recognition, distance between experts statements, consensus.
ACM Classification Keywords: I.2.6. Artificial Intelligence - knowledge acquisition.
Link:
CONSTRUCTING OF A CONSENSUS OF SEVERAL EXPERTS STATEMENTS∗
Gennadiy Lbov, Maxim Gerasimov
http://www.foibg.com/ijita/vol14/ijita14-1-p12.pdf
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DECISION TREES FOR APPLICABILITY OF EVOLUTION RULES IN TRANSITION P SYSTEMS
By: Fernandez et al.
(4055 reads)
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(1.00/10)
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Abstract: Transition P Systems are a parallel and distributed computational model based on the notion of the
cellular membrane structure. Each membrane determines a region that encloses a multiset of objects and
evolution rules. Transition P Systems evolve through transitions between two consecutive configurations that are
determined by the membrane structure and multisets present inside membranes. Moreover, transitions between
two consecutive configurations are provided by an exhaustive non-deterministic and parallel application of active
evolution rules subset inside each membrane of the P system. But, to establish the active evolution rules subset,
it is required the previous calculation of useful and applicable rules. Hence, computation of applicable evolution
rules subset is critical for the whole evolution process efficiency, because it is performed in parallel inside each
membrane in every evolution step. The work presented here shows advantages of incorporating decision trees in
the evolution rules applicability algorithm. In order to it, necessary formalizations will be presented to consider this
as a classification problem, the method to obtain the necessary decision tree automatically generated and the
new algorithm for applicability based on it.
Keywords: Decision Tree, ID3, Evolution Rules, Applicability, Transition P System.
ACM Classification Keywords: I.2.6 Learning – Decision Tree; D.1.m Miscellaneous – Natural Computing
Link:
DECISION TREES FOR APPLICABILITY OF EVOLUTION RULES IN TRANSITION P SYSTEMS
Luis Fernandez, Fernando Arroyo, Ivan Garcia, Gines Bravo
http://www.foibg.com/ijita/vol14/ijita14-3-p05.pdf
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APPROACHES TO SEQUENCE SIMILARITY REPRESENTATION
By: Artem Sokolov, Dmitri Rachkovskij
(3678 reads)
Rating:
(1.00/10)
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Abstract: We discuss several approaches to similarity preserving coding of symbol sequences and possible
connections of their distributed versions to metric embeddings. Interpreting sequence representation methods
with embeddings can help develop an approach to their analysis and may lead to discovering useful properties.
Keywords: sequence similarity, metric embeddings, distributed representations, neural networks
ACM Classification Keywords: I.2.6 Connectionism and neural nets, E.m Miscellaneous, G.2.3 Applications
Link:
APPROACHES TO SEQUENCE SIMILARITY REPRESENTATION
Artem Sokolov, Dmitri Rachkovskij
http://www.foibg.com/ijita/vol13/ijita13-3-p11.pdf
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NEURAL NETWORK BASED APPROACH FOR DEVELOPING THE ENTERPRISE STRATEGY
By: Todorka Kovacheva, Daniela Toshkova
(9889 reads)
Rating:
(1.00/10)
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Abstract: Modern enterprises work in highly dynamic environment. Thus, the developing of company strategy is
of crucial importance. It determines the surviving of the enterprise and its evolution. Adapting the desired
management goal in accordance with the environment changes is a complex problem. In the present paper, an
approach for solving this problem is suggested. It is based on predictive control philosophy. The enterprise is
modelled as a cybernetic system and the future plant response is predicted by a neural network model. The
predictions are passed to an optimization routine, which attempts to minimize the quadratic performance criterion.
Keywords: enterprise strategy, model predictive control, neural network, black-box modeling, business trends.
ACM Classification Keywords: I.2.6 Artificial Intelligence: Neural nets; I.6.3 Simulation and Modeling:
Applications
Link:
NEURAL NETWORK BASED APPROACH FOR DEVELOPING THE ENTERPRISE STRATEGY
Todorka Kovacheva, Daniela Toshkova
http://www.foibg.com/ijita/vol13/ijita13-2-p06.pdf
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ANALOGOUS REASONING AND CASE-BASED REASONING FOR INTELLIGENT ...
By: Alexander Eremeev, Pavel Varshavsky
(3931 reads)
Rating:
(1.00/10)
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Abstract: Methods of analogous reasoning and case-based reasoning for intelligent decision support systems
are considered. Special attention is drawn to methods based on a structural analogy that take the context into
account. This work was supported by RFBR (projects 02-07-90042, 05-07-90232).
ACM Classification Keywords: I.2.6 Artificial intelligence: Learning – analogies; I.2.4 Artificial intelligence:
Knowledge Representation Formalisms and Methods – semantic networks.
Link:
ANALOGOUS REASONING AND CASE-BASED REASONING FOR INTELLIGENT DECISION SUPPORT SYSTEMS
Alexander Eremeev, Pavel Varshavsky
http://www.foibg.com/ijita/vol13/ijita13-4-p03.pdf
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USING SENSITIVITY AS A METHOD FOR RANKING THE TEST CASES CLASSIFIED ...
By: Sabrina Noblesse, Koen Vanhoof
(4079 reads)
Rating:
(1.00/10)
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Abstract: Usually, data mining projects that are based on decision trees for classifying test cases will use the
probabilities provided by these decision trees for ranking classified test cases. We have a need for a better
method for ranking test cases that have already been classified by a binary decision tree because these
probabilities are not always accurate and reliable enough. A reason for this is that the probability estimates
computed by existing decision tree algorithms are always the same for all the different cases in a particular leaf of
the decision tree. This is only one reason why the probability estimates given by decision tree algorithms can not
be used as an accurate means of deciding if a test case has been correctly classified. Isabelle Alvarez has
proposed a new method that could be used to rank the test cases that were classified by a binary decision tree
Alvarez, 2004. In this paper we will give the results of a comparison of different ranking methods that are based
on the probability estimate, the sensitivity of a particular case or both.
ACM Classification Keywords: I.2.6 Learning – induction, concept learning; I.5.2 Classifier design and
Evaluation
Link:
USING SENSITIVITY AS A METHOD FOR RANKING THE TEST CASES CLASSIFIED BY BINARY DECISION TREES
Sabrina Noblesse, Koen Vanhoof
http://www.foibg.com/ijita/vol13/ijita13-1-p01.pdf
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DIAGARA: AN INCREMENTAL ALGORITHM FOR INFERRING IMPLICATIVE RULES FROM EXAMPLES
By: Xenia Naidenova
(3840 reads)
Rating:
(1.00/10)
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Abstract: An approach is proposed for inferring implicative logical rules from examples. The concept of a good
diagnostic test for a given set of positive examples lies in the basis of this approach. The process of inferring
good diagnostic tests is considered as a process of inductive common sense reasoning. The incremental
approach to learning algorithms is implemented in an algorithm DIAGaRa for inferring implicative rules
from examples.
Keywords: Incremental and non-incremental learning, learning from examples, machine learning, common
sense reasoning, inductive inference, good diagnostic test, lattice theory.
ACM Classification Keywords: I.2.6 Artificial Intelligence: Learning; K.2.3. Concept Learning
Link:
DIAGARA: AN INCREMENTAL ALGORITHM FOR INFERRING IMPLICATIVE RULES FROM EXAMPLES
Xenia Naidenova
http://www.foibg.com/ijita/vol12/ijita12-2-p10.pdf
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A NEW APPROACH FOR ELIMINATING THE SPURIOUS STATES ...
By: Martínez et al.
(3930 reads)
Rating:
(1.00/10)
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Abstract: As is well known, the Convergence Theorem for the Recurrent Neural Networks, is based in
Lyapunov´s second method, which states that associated to any one given net state, there always exist a real
number, in other words an element of the one dimensional Euclidean Space R, in such a way that when the state
of the net changes then its associated real number decreases. In this paper we will introduce the two dimensional
Euclidean space R2, as the space associated to the net, and we will define a pair of real numbers ( x, y) ,
associated to any one given state of the net. We will prove that when the net change its state, then the product
x ⋅ y will decrease. All the states whose projection over the energy field are placed on the same hyperbolic
surface, will be considered as points with the same energy level. On the other hand we will prove that if the states
are classified attended to their distances to the zero vector, only one pattern in each one of the different classes
may be at the same energy level. The retrieving procedure is analyzed trough the projection of the states on that
plane. The geometrical properties of the synaptic matrix W may be used for classifying the n-dimensional statevector
space in n classes. A pattern to be recognized is seen as a point belonging to one of these classes, and
depending on the class the pattern to be retrieved belongs, different weight parameters are used. The capacity of
the net is improved and the spurious states are reduced. In order to clarify and corroborate the theoretical results,
together with the formal theory, an application is presented
Keywords: Learning Systems, Pattern Recognition, Graph Theory, Image Processing, Recurrent Neural
Networks.
ACM Classification Keywords: I.2.6 Learning: Connectionism and neural nets; G.2.2. Graph Theory;
I.4.0 Image processing software
Link:
A NEW APPROACH FOR ELIMINATING THE SPURIOUS STATES IN RECURRENT NEURAL NETWORKS
Víctor Giménez-Martínez?, Carmen Torres,
José Joaquín Erviti Anaut, Mercedes Perez-Castellanos?
http://www.foibg.com/ijita/vol12/ijita12-2-p03.pdf
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ADAPTIVE WAVELET-NEURO-FUZZY NETWORK IN THE FORECASTING ...
By: Bodyanskiy et al.
(3935 reads)
Rating:
(1.00/10)
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Abstract: The architecture of adaptive wavelet-neuro-fuzzy-network and its learning algorithm for the solving of nonstationary processes forecasting and emulation tasks are proposed. The learning algorithm is optimal on rateof convergence and allows tuning both the synaptic weights and dilations and translations parameters of waveletactivation functions. The simulation of developed wavelet-neuro-fuzzy network architecture and its learningalgorithm justifies the effectiveness of proposed approach.
Keywords: wavelet, adaptive wavelet-neuro-fuzzy network, recurrent learning algorithm, forecasting, emulation.
ACM Classification Keywords: I.2.6 Learning – Connectionism and neural nets
Link:
ADAPTIVE WAVELET-NEURO-FUZZY NETWORK IN THE FORECASTING AND EMULATION TASKS
Yevgeniy Bodyanskiy, Iryna Pliss, Olena Vynokurova
http://www.foibg.com/ijita/vol15/ijita15-1-p08.pdf
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A WEB-SYSTEM FOR COMPUTER EXPERIMENTS IN THE FIELD OF PROGRAM TRANSFORMATIONS
By: Margarita Knyazeva, Alexander Kleshchev
(3452 reads)
Rating:
(1.00/10)
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Abstract: The paper presents basic notions and scientific achievements in the field of program transformations,
describes usage of these achievements both in the professional activity (when developing optimizing and
unparallelizing compilers) and in the higher education. It also analyzes main problems in this area. The concept of
control of program transformation information is introduced in the form of specialized knowledge bank on
computer program transformations to support the scientific research, education and professional activity in the
field. The tasks that are solved by the knowledge bank are formulated. The paper is intended for experts in the
artificial intelligence, optimizing compilation, postgraduates and senior students of corresponding specialties; it
may be also interesting for university lecturers and instructors.
Keywords: Knowledge bank; Ontology; Knowledge base; Ontology editor; Database editor; Knowledge
processing; Program transformations; Optimizing compilation
ACM Classification Keywords: I.2.5 Artificial intelligence: programming languages and software
Link:
A WEB-SYSTEM FOR COMPUTER EXPERIMENTS IN THE FIELD OF PROGRAM TRANSFORMATIONS
Margarita Knyazeva, Alexander Kleshchev
http://www.foibg.com/ijita/vol13/ijita13-4-p05.pdf
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METHODS OF ADAPTIVE EXTRACTION AND ANALYSIS OF KNOWLEDGEFOR KNOWLEDGE-BASE ...
By: Kuzemin et al.
(3274 reads)
Rating:
(1.00/10)
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Abstract: An approach for knowledge extraction from the information arriving to the knowledge base input and
also new knowledge distribution over knowledge subsets already present in the knowledge base is developed.
It is also necessary to realize the knowledge transform into parameters (data) of the model for the following
decision-making on the given subset. It is assumed to realize the decision-making with the fuzzy sets’ apparatus.
ACM Classification Keywords: I.2.5 - Expert Systems; I.2.6 - Knowledge acquisition
Link:
METHODS OF ADAPTIVE EXTRACTION AND ANALYSIS OF KNOWLEDGEFOR KNOWLEDGE-BASE CONSTRUCTION AND FAST DECISION MAKING
Alexander Kuzemin, Darya Fastova, Igor Yanchevsky
http://www.foibg.com/ijita/vol12/ijita12-1-p13.pdf
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