[[abstract]]We propose here an efficient data mining algorithm to sanitize informative association rules when the database is updated, i.e., when a new data set is added to the original database. For a given predicting item, an informative association rule set [16] is the smallest association rule set that makes the same prediction as the entire association rule set by confidence priority. Several approaches to sanitize informative association rules from static databases have been proposed [27,28]. However, frequent updates to the database may require repeated sanitizations of original database and added data sets. The efforts of previous sanitization are not utilized in these approaches. In this work, we propose using pattern inversion tre...
Abstract. Mining transaction databases for association rules usually generates a large number of rul...
A more general incremental updating technique is developed for maintaining the association rules dis...
The association rules represent an important class of knowledge that can be discovered from data war...
[[abstract]]Recent development in Privacy-Preserving Data Mining has proposed many efficient and pra...
[[abstract]]We propose here an efficient data mining algorithm to hide collaborative recommendation ...
Data sanitization is a process that is used to promote the sharing of transactional databases among ...
[[abstract]]The goal of this project is to develop a set of hiding techniques of constrained associa...
[[abstract]]Data mining techniques have been developed in many applications. However, it also causes...
[[abstract]]An Informative Rule Set (IRS) is the smallest subset of an association rule set such tha...
[[abstract]]For a given recommended item, a collaborative recommendation association rule set is the...
Privacy preserving data mining is a continues way for to use data mining, without disclosing private...
In this paper, we devise an algorithm with which we can estimate the difference between the associat...
Data mining has recently attracted tremendous amount ofattention in the database research because of...
Mining transaction databases for association rules usually generates a large number of rules, most o...
The original publication is available at www.springerlink.comMining transaction databases for associ...
Abstract. Mining transaction databases for association rules usually generates a large number of rul...
A more general incremental updating technique is developed for maintaining the association rules dis...
The association rules represent an important class of knowledge that can be discovered from data war...
[[abstract]]Recent development in Privacy-Preserving Data Mining has proposed many efficient and pra...
[[abstract]]We propose here an efficient data mining algorithm to hide collaborative recommendation ...
Data sanitization is a process that is used to promote the sharing of transactional databases among ...
[[abstract]]The goal of this project is to develop a set of hiding techniques of constrained associa...
[[abstract]]Data mining techniques have been developed in many applications. However, it also causes...
[[abstract]]An Informative Rule Set (IRS) is the smallest subset of an association rule set such tha...
[[abstract]]For a given recommended item, a collaborative recommendation association rule set is the...
Privacy preserving data mining is a continues way for to use data mining, without disclosing private...
In this paper, we devise an algorithm with which we can estimate the difference between the associat...
Data mining has recently attracted tremendous amount ofattention in the database research because of...
Mining transaction databases for association rules usually generates a large number of rules, most o...
The original publication is available at www.springerlink.comMining transaction databases for associ...
Abstract. Mining transaction databases for association rules usually generates a large number of rul...
A more general incremental updating technique is developed for maintaining the association rules dis...
The association rules represent an important class of knowledge that can be discovered from data war...