EMAIL: PASSWORD:
Front Office
UPT. PERPUSTAKAAN
Universitas Esa Unggul


Kampus Emas UEU - Jakarta Barat

Phone : 021-5674223, ext 282
Fax :
E-mail : [email protected]
Website : http://library.esaunggul.ac.id

Support (Customer Service) :
[email protected]








Welcome..guys!

Have a problem with your access?
Please, contact our technical support below:
LIVE SUPPORT


Astrid Chrisafi




! ATTENTION !

To facilitate the activation process, please fill out the member application form correctly and completely
Registration activation of our members will process up to max 24 hours (confirm by email). Please wait patiently

Still Confuse?
Please read our User Guide

Keyword
Mode
Expanded Search (for Free text search only)
 

UEU » Journal » Teknik Informatika
Posted by [email protected] at 25/01/2021 18:37:15  •  314 Views


MINING SIMILAR PATTERN WITH ATTRIBUTE ORIENTED INDUCTION HIGH LEVEL EMERGING PATTERN (AOI-HEP) DATA MINING TECHNIQUE

Created by :
Harco Leslie Hendric Spits Warnars ( none )
Nizirwan Anwar   Richard Randriatoamanana



SubjectDATA
PEMBELAJARAN
Alt. Subject DATA MINING
LEARNING
KeywordINFORMATION
TECHNOLOGY

Alt. Description

AOI-HEP (Attribute Oriented Induction High Emerging Pattern) as new data mining technique has been success to mine frequent pattern and is extended to mine similar patterns. AOI-HEP is success to mine 3 and 1 similar patterns from IPUMS and breast cancer UCI machine learning datasets respectively. Meanwhile, the experiments showed that there was no finding similar patterns on adult and census UCI machine learning datasets. The experiments showed that finding AOI-HEP similar pattern in dataset is influenced by learning on chosen high level concept attribute i n concept hierarchy and it is applied to AOI-HEP frequent pattern in previous research as well. The experiments chosed high level concept attributes such as workclass, clump thickness, means and marts for adult, breast cancer, census and IPUMS datasets respectively. In order to proof that the chosen high level concept attribute will influences the AOI-HEP similar pattern in dataset, then extended experiments were carried on and the finding were census dataset which had been none AOI -HEP similar pattern, had AOI-HEP similar pattern when learned on high level concept in marital attribute. Meanwhile, Breast cancer which had been had 1 AOI-HEP similar pattern, had none AOI-HEP similar pattern when learned on high level concept in attributes such as cell size, cell shape and bare nuclei. The 2 of 3 finding Similar patterns in IPUMS dataset have strong discriminant rule since having large growth rates such as 1.53% and 3.47%, and having large supports in target dataset such as 4.54% and 5.45 respectively. Moreover, there have small supports in contrasting dataset such as 2.96% and 1.57% respectively.

Contributor:
  1. Horacio Emilio Perez Sanchez
Date Create:25/01/2021
Type:Text
Format:pdf
Language:Indonesian
Identifier:UEU-Journal-11_0699
Collection ID:11_0699


Source :
Jurnal Teknologi (Sciences & Engineering) 79:7�2 (2017) 51�57

Relation Collection:
Civitas Akademika Universitas Esa Unggul

Coverage :
Fakultas Ilmu Komputer

Rights :
@2021 Perpustakaan Universitas Esa Unggul


Publication URL :
https://digilib.esaunggul.ac.id/mining-similar-pattern-with-attributeoriented-induction-high-level-emergingpattern-aoihep-data-mining-technique-17953.html




[ Free Download - Free for All ]

  1.  UEU-Journal-17953-11_0699.pdf - 1257 KB

[ FullText Content - Please, register first ]

...No Files...

 10 Similar Document...

     No similar subject found !

 10 Related Document...






HELP US !
You can help us to define the exact keyword for this document by clicking the link below :

INFORMATION , TECHNOLOGY



POLLING

Bagaimana pendapat Anda tentang repository kami ?

Bagus Sekali
Baik
Biasa
Jelek
Mengecewakan




182702586


Visitors Today : 1
Total Visitor : 1970538

Hits Today : 121657
Total Hits : 182702585

Visitors Online: 1


Calculated since
16 May 2012

You are connected from 172.17.121.29
using Mozilla/5.0 AppleWebKit/537.36 (KHTML, like Gecko; compatible; ClaudeBot/1.0; [email protected])


UEU Digital Repository Feeds


Copyright © UEU Library 2012 - 2025 - All rights reserved.
Dublin Core Metadata Initiative and OpenArchives Compatible
Developed by Hassan