Library Automation and Digital Archive
LONTAR
Fakultas Ilmu Komputer
Universitas Indonesia

Pencarian Sederhana

Find Similar Add to Favorite

Call Number SEM-317
Collection Type Indeks Artikel prosiding/Sem
Title c-ANT-Wum: ant colony classification algorithms coping continuo attributes for web usage mining
Author Abdurrahman; Bambang Riyanto T.; Rila Mandala; Rajesri Govindaraju;
Publisher Proceedings of international conference on rural information and communication technology 2009, ITB 17-18 Juni 2009
Subject Terms-Ant colony optimization, web user classifiaction, minimum description length.
Location
Lokasi : Perpustakaan Fakultas Ilmu Komputer
Nomor Panggil ID Koleksi Status
SEM-317 TERSEDIA
Tidak ada review pada koleksi ini: 42678
In a previous work we have proposed ant-miner algorithm based on ant colony optimization (ACO) to classify web users. Ant-miner algorithm capes only nominal/ category attributes, the we can't know real value of the attributes. We must discretise continuous attributes in preprocessing step to support this algorithm running well. In this paper we propose enhancement of ACO algarithm to classify web users for web usage mining: web access log, profile user, and transaction data form e-commerce web. Using these data combination facilitate to classify web users in potential web user class and not potential. In this paper we propose a new heuristic method for web user classification in web usage mining. This heuiristic would he implemented in ACO classification algorithms that copes mix attributes (category and continuous attributes). And we use MDL (Minimum desricption lenght) discretisation to handle continuous attributes. MDL allows a more fexible representation of continuous attributes intervals. In order to implement an improved pheromone updating method. In our e=research, we compared proposed heuristic and information teory heuristic (heuristic that used in origin Ant Miner). The results show that our heuristic method is very compotitive in terms of accuracy and produces signifficantly simpler (smaller) rule sets, a desirable result in data mining)