نتایج جستجو برای: frequent itemset

تعداد نتایج: 127158  

Journal: :CoRR 2006
Shariq Bashir Abdul Rauf Baig

Mining frequent itemset using bit-vector representation approach is very efficient for dense type datasets, but highly inefficient for sparse datasets due to lack of any efficient bit-vector projection technique. In this paper we present a novel efficient bit-vector projection technique, for sparse and dense datasets. To check the efficiency of our bit-vector projection technique, we present a ...

2009
Mohammed J. Zaki

DEFINITION Let I be a set of binary-valued attributes, called items. A set X ⊆ I is called an itemset. A transaction database D is a multiset of itemsets, where each itemset, called a transaction, has a unique identifier, called a tid. The support of an itemset X in a dataset D, denoted sup(X), is the fraction of transactions in D where X appears as a subset. X is said to be a frequent itemset ...

Journal: :International Journal of Computer Applications 2016

Journal: :International Journal for Research in Applied Science and Engineering Technology 2018

Journal: :International Journal of Computer Applications 2013

Journal: :International Journal of Computer Applications 2016

2000
Jean-François Boulicaut Artur Bykowski Christophe Rigotti C. Rigotti

Given a large collection of transactions containing items, a basic common data mining problem is to extract the so-called frequent itemsets (i.e., set of items appearing in at least a given number of transactions). In this paper, we propose a structure called free-sets, from which we can approximate any itemset support (i.e., the number of transactions containing the itemset) and we formalize t...

Journal: :CoRR 2018
Vasileios Kagklis Elias C. Stavropoulos Vassilios S. Verykios

Advances in data collection and data storage technologies have given way to the establishment of transactional databases among companies and organizations, as they allow enormous amounts of data to be stored efficiently. Useful knowledge can be mined from these data, which can be used in several ways depending on the nature of the data. Quite often companies and organizations are willing to sha...

2014
Chongjing Sun Yan Fu Junlin Zhou Hui Gao

Frequent itemset mining is the important first step of association rule mining, which discovers interesting patterns from the massive data. There are increasing concerns about the privacy problem in the frequent itemset mining. Some works have been proposed to handle this kind of problem. In this paper, we introduce a personalized privacy problem, in which different attributes may need differen...

2009
Shui Wang Ying Zhan Le Wang

Discovering maximal frequent itemset is a key issue in data mining; the Apriori-like algorithms use candidate itemsets generating/testing method, but this approach is highly time-consuming. To look for an algorithm that can avoid the generating of vast volume of candidate itemsets, nor the generating of frequent pattern tree, DCIP algorithm uses data-set condensing and intersection pruning to f...

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