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Granular computing in decision appro...
~
Polkowski, Lech.
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Granular computing in decision approximation = an application of rough mereology /
Record Type:
Electronic resources : Monograph/item
Title/Author:
Granular computing in decision approximation/ by Lech Polkowski, Piotr Artiemjew.
Reminder of title:
an application of rough mereology /
Author:
Polkowski, Lech.
other author:
Artiemjew, Piotr.
Published:
Cham :Springer International Publishing : : 2015.,
Description:
xv, 452 p. :ill., digital ;24 cm.
[NT 15003449]:
Similarity and Granulation -- Mereology and Rough Mereology. Rough Mereological Granulation -- Learning data Classification. Classifiers in General and in Decision Systems -- Methodologies for Granular Reflections -- Covering Strategies -- Layered Granulation -- Naive Bayes Classifier on Granular Reflections -- The Case of Concept-Dependent Granulation -- Granular Computing in the Problem of Missing Values -- Granular Classifiers Based on Weak Rough Inclusions -- Effects of Granulation on Entropy and Noise in Data. -- Conclusions -- Appendix. Data Characteristics Bearing on Classification.
Contained By:
Springer eBooks
Subject:
Rough sets. -
Online resource:
http://dx.doi.org/10.1007/978-3-319-12880-1
ISBN:
9783319128801 (electronic bk.)
Granular computing in decision approximation = an application of rough mereology /
Polkowski, Lech.
Granular computing in decision approximation
an application of rough mereology /[electronic resource] :by Lech Polkowski, Piotr Artiemjew. - Cham :Springer International Publishing :2015. - xv, 452 p. :ill., digital ;24 cm. - Intelligent systems reference library,v.771868-4394 ;. - Intelligent systems reference library ;v.24..
Similarity and Granulation -- Mereology and Rough Mereology. Rough Mereological Granulation -- Learning data Classification. Classifiers in General and in Decision Systems -- Methodologies for Granular Reflections -- Covering Strategies -- Layered Granulation -- Naive Bayes Classifier on Granular Reflections -- The Case of Concept-Dependent Granulation -- Granular Computing in the Problem of Missing Values -- Granular Classifiers Based on Weak Rough Inclusions -- Effects of Granulation on Entropy and Noise in Data. -- Conclusions -- Appendix. Data Characteristics Bearing on Classification.
This book presents a study in knowledge discovery in data with knowledge understood as a set of relations among objects and their properties. Relations in this case are implicative decision rules and the paradigm in which they are induced is that of computing with granules defined by rough inclusions, the latter introduced and studied within rough mereology, the fuzzified version of mereology. In this book basic classes of rough inclusions are defined and based on them methods for inducing granular structures from data are highlighted. The resulting granular structures are subjected to classifying algorithms, notably k-nearest neighbors and bayesian classifiers. Experimental results are given in detail both in tabular and visualized form for fourteen data sets from UCI data repository. A striking feature of granular classifiers obtained by this approach is that preserving the accuracy of them on original data, they reduce substantially the size of the granulated data set as well as the set of granular decision rules. This feature makes the presented approach attractive in cases where a small number of rules providing a high classification accuracy is desirable. As basic algorithms used throughout the text are explained and illustrated with hand examples, the book may also serve as a textbook.
ISBN: 9783319128801 (electronic bk.)
Standard No.: 10.1007/978-3-319-12880-1doiSubjects--Topical Terms:
577805
Rough sets.
LC Class. No.: QA248
Dewey Class. No.: 511.322
Granular computing in decision approximation = an application of rough mereology /
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This book presents a study in knowledge discovery in data with knowledge understood as a set of relations among objects and their properties. Relations in this case are implicative decision rules and the paradigm in which they are induced is that of computing with granules defined by rough inclusions, the latter introduced and studied within rough mereology, the fuzzified version of mereology. In this book basic classes of rough inclusions are defined and based on them methods for inducing granular structures from data are highlighted. The resulting granular structures are subjected to classifying algorithms, notably k-nearest neighbors and bayesian classifiers. Experimental results are given in detail both in tabular and visualized form for fourteen data sets from UCI data repository. A striking feature of granular classifiers obtained by this approach is that preserving the accuracy of them on original data, they reduce substantially the size of the granulated data set as well as the set of granular decision rules. This feature makes the presented approach attractive in cases where a small number of rules providing a high classification accuracy is desirable. As basic algorithms used throughout the text are explained and illustrated with hand examples, the book may also serve as a textbook.
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EB QA248 .P769 2015
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