Automatically Concept Hierarchy Construction and Measurement for Objects without Attributes

碩士 === 國立嘉義大學 === 資訊工程學系研究所 === 97 === Abstract Concept hierarchies are important for generalization in many data mining applications. Abundant algorithms have been proposed for automatic construction of concept hierarchy. A typical application of such algorithms is constructing directories for docu...

Full description

Bibliographic Details
Main Authors: Hung-Chung Lai, 賴弘忠
Other Authors: Huang-Cheng Kuo
Format: Others
Language:en_US
Online Access:http://ndltd.ncl.edu.tw/handle/ytvs3n
id ndltd-TW-097NCYU5392002
record_format oai_dc
spelling ndltd-TW-097NCYU53920022019-05-15T19:49:41Z http://ndltd.ncl.edu.tw/handle/ytvs3n Automatically Concept Hierarchy Construction and Measurement for Objects without Attributes 為無屬性物件自動建構概念階層及其評量 Hung-Chung Lai 賴弘忠 碩士 國立嘉義大學 資訊工程學系研究所 97 Abstract Concept hierarchies are important for generalization in many data mining applications. Abundant algorithms have been proposed for automatic construction of concept hierarchy. A typical application of such algorithms is constructing directories for documents in information retrieval community. However, the research result can not be directly adopted for automatic construction of concept hierarchies for objects with identifiers only, such as items in market basket database where items have no attribute and only similarities between items are available. So, the metrics for directories for documents are not suitable for hierarchies for identifier-only data. In this paper, we propose a measurement that considers the unevenness of similarities among objects in the child nodes. We use the unevenness value to express the balance of concept hierarchies. For constructing a concept hierarchy, we propose a hierarchical clustering with join/merge decision (HCJMD) which is modified from hierarchical agglomerative clustering (HAC). Huang-Cheng Kuo 郭煌政 學位論文 ; thesis 50 en_US
collection NDLTD
language en_US
format Others
sources NDLTD
description 碩士 === 國立嘉義大學 === 資訊工程學系研究所 === 97 === Abstract Concept hierarchies are important for generalization in many data mining applications. Abundant algorithms have been proposed for automatic construction of concept hierarchy. A typical application of such algorithms is constructing directories for documents in information retrieval community. However, the research result can not be directly adopted for automatic construction of concept hierarchies for objects with identifiers only, such as items in market basket database where items have no attribute and only similarities between items are available. So, the metrics for directories for documents are not suitable for hierarchies for identifier-only data. In this paper, we propose a measurement that considers the unevenness of similarities among objects in the child nodes. We use the unevenness value to express the balance of concept hierarchies. For constructing a concept hierarchy, we propose a hierarchical clustering with join/merge decision (HCJMD) which is modified from hierarchical agglomerative clustering (HAC).
author2 Huang-Cheng Kuo
author_facet Huang-Cheng Kuo
Hung-Chung Lai
賴弘忠
author Hung-Chung Lai
賴弘忠
spellingShingle Hung-Chung Lai
賴弘忠
Automatically Concept Hierarchy Construction and Measurement for Objects without Attributes
author_sort Hung-Chung Lai
title Automatically Concept Hierarchy Construction and Measurement for Objects without Attributes
title_short Automatically Concept Hierarchy Construction and Measurement for Objects without Attributes
title_full Automatically Concept Hierarchy Construction and Measurement for Objects without Attributes
title_fullStr Automatically Concept Hierarchy Construction and Measurement for Objects without Attributes
title_full_unstemmed Automatically Concept Hierarchy Construction and Measurement for Objects without Attributes
title_sort automatically concept hierarchy construction and measurement for objects without attributes
url http://ndltd.ncl.edu.tw/handle/ytvs3n
work_keys_str_mv AT hungchunglai automaticallyconcepthierarchyconstructionandmeasurementforobjectswithoutattributes
AT làihóngzhōng automaticallyconcepthierarchyconstructionandmeasurementforobjectswithoutattributes
AT hungchunglai wèiwúshǔxìngwùjiànzìdòngjiàngòugàiniànjiēcéngjíqípíngliàng
AT làihóngzhōng wèiwúshǔxìngwùjiànzìdòngjiàngòugàiniànjiēcéngjíqípíngliàng
_version_ 1719096519582285824