Data Clustering / / Niansheng Tang. editor.

In view of the considerable applications of data clustering techniques in various fields, such as engineering, artificial intelligence, machine learning, clinical medicine, biology, ecology, disease diagnosis, and business marketing, many data clustering algorithms and methods have been developed to...

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Place / Publishing House:London : : IntechOpen,, 2022.
Year of Publication:2022
Language:English
Physical Description:1 online resource (126 pages)
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spelling Data Clustering / Niansheng Tang. editor.
London : IntechOpen, 2022.
1 online resource (126 pages)
text txt rdacontent
computer c rdamedia
online resource cr rdacarrier
Description based on publisher supplied metadata and other sources.
In view of the considerable applications of data clustering techniques in various fields, such as engineering, artificial intelligence, machine learning, clinical medicine, biology, ecology, disease diagnosis, and business marketing, many data clustering algorithms and methods have been developed to deal with complicated data. These techniques include supervised learning methods and unsupervised learning methods such as density-based clustering, K-means clustering, and K-nearest neighbor clustering. This book reviews recently developed data clustering techniques and algorithms and discusses the development of data clustering, including measures of similarity or dissimilarity for data clustering, data clustering algorithms, assessment of clustering algorithms, and data clustering methods recently developed for insurance, psychology, pattern recognition, and survey data.
1. Introductory Chapter: Development of Data Clustering -- 2. Clustering Algorithms: An Exploratory Review -- 3. Clustering by Similarity of Brazilian Legal Documents Using Natural Language Processing Approaches -- Assessing Heterogeneity of Two-Part Model via Bayesian Model-Based Clustering with Its Application to Cocaine Use Data -- 5. Application of Jump Diffusion Models in Insurance Claim Estimation -- 6. Fuzzy Perceptron Learning for Non-Linearly Separable Patterns -- . Semantic Map: Bringing Together Groups and Discourses.
Multivariate analysis.
Cluster analysis.
1-83969-889-6
Tang, Niansheng, editor.
language English
format eBook
author2 Tang, Niansheng,
author_facet Tang, Niansheng,
author2_variant n t nt
author2_role TeilnehmendeR
title Data Clustering /
spellingShingle Data Clustering /
1. Introductory Chapter: Development of Data Clustering -- 2. Clustering Algorithms: An Exploratory Review -- 3. Clustering by Similarity of Brazilian Legal Documents Using Natural Language Processing Approaches -- Assessing Heterogeneity of Two-Part Model via Bayesian Model-Based Clustering with Its Application to Cocaine Use Data -- 5. Application of Jump Diffusion Models in Insurance Claim Estimation -- 6. Fuzzy Perceptron Learning for Non-Linearly Separable Patterns -- . Semantic Map: Bringing Together Groups and Discourses.
title_full Data Clustering / Niansheng Tang. editor.
title_fullStr Data Clustering / Niansheng Tang. editor.
title_full_unstemmed Data Clustering / Niansheng Tang. editor.
title_auth Data Clustering /
title_new Data Clustering /
title_sort data clustering /
publisher IntechOpen,
publishDate 2022
physical 1 online resource (126 pages)
contents 1. Introductory Chapter: Development of Data Clustering -- 2. Clustering Algorithms: An Exploratory Review -- 3. Clustering by Similarity of Brazilian Legal Documents Using Natural Language Processing Approaches -- Assessing Heterogeneity of Two-Part Model via Bayesian Model-Based Clustering with Its Application to Cocaine Use Data -- 5. Application of Jump Diffusion Models in Insurance Claim Estimation -- 6. Fuzzy Perceptron Learning for Non-Linearly Separable Patterns -- . Semantic Map: Bringing Together Groups and Discourses.
isbn 1-83969-889-6
callnumber-first Q - Science
callnumber-subject QA - Mathematics
callnumber-label QA278
callnumber-sort QA 3278 D383 42022
illustrated Not Illustrated
dewey-hundreds 500 - Science
dewey-tens 510 - Mathematics
dewey-ones 519 - Probabilities & applied mathematics
dewey-full 519.535
dewey-sort 3519.535
dewey-raw 519.535
dewey-search 519.535
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carrierType_str_mv cr
is_hierarchy_title Data Clustering /
author2_original_writing_str_mv noLinkedField
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