This paper presents an efficient algorithm for detecting changes (drifts) in the utility distributions of patterns, named High Utility Drift Detection in Transactional Data Stream (HUDD-TDS). The algorithm is specifically suitable for quantitative data streams, where each item has a unit profit, and non-binary purchase quantities are allowed. We propose a method that enables the HUDD-TDS algorithm to be used in an online setting to detect drifts. An important property of HUDD-TDS is that it can quickly adapt to changes in streams, while considering older transactions to be less important than new ones. Furthermore, the proposed method applies statistical testing based on Hoeffding bound with Bonferroni correction in order to ensure that onl...
Data streams are dynamic, with frequent distributional changes. In this paper, we propose a statisti...
Data streams have become ubiquitous over the last two decades; potentially unending streams of conti...
Process mining is an emerging data mining task of gathering valuable knowledge out of the huge colle...
There exists a large body of work on online drift detection with the goal of dynamically finding and...
Abstract. In applications such as fraud and intrusion detection, it is of great interest to measure ...
Existing business process drift detection methods do not work with event streams. As such, they are ...
Early detection of business process drifts from event logs enables analysts to identify changes that...
Increasingly, Internet of Things (IoT) domains, such as sensor networks, smart cities, and social ne...
The training set consists of many features that influence the classifier in different degrees. Choos...
The last decade has seen a surge of interest in adaptive learning algorithms for data stream classif...
Detecting changes in data streams is a core objective in their analysis and has applications in, say...
Business processes are prone to continuous and unexpected changes. Process workers may start executi...
AbstractValidating online stream classifiers has traditionally assumed the availability of labeled s...
"In recent years the analysis of data streams has received a lot of attention.. This is motivated by...
[[abstract]]In this thesis, a method for discovering recently status-changed itemsets over data stre...
Data streams are dynamic, with frequent distributional changes. In this paper, we propose a statisti...
Data streams have become ubiquitous over the last two decades; potentially unending streams of conti...
Process mining is an emerging data mining task of gathering valuable knowledge out of the huge colle...
There exists a large body of work on online drift detection with the goal of dynamically finding and...
Abstract. In applications such as fraud and intrusion detection, it is of great interest to measure ...
Existing business process drift detection methods do not work with event streams. As such, they are ...
Early detection of business process drifts from event logs enables analysts to identify changes that...
Increasingly, Internet of Things (IoT) domains, such as sensor networks, smart cities, and social ne...
The training set consists of many features that influence the classifier in different degrees. Choos...
The last decade has seen a surge of interest in adaptive learning algorithms for data stream classif...
Detecting changes in data streams is a core objective in their analysis and has applications in, say...
Business processes are prone to continuous and unexpected changes. Process workers may start executi...
AbstractValidating online stream classifiers has traditionally assumed the availability of labeled s...
"In recent years the analysis of data streams has received a lot of attention.. This is motivated by...
[[abstract]]In this thesis, a method for discovering recently status-changed itemsets over data stre...
Data streams are dynamic, with frequent distributional changes. In this paper, we propose a statisti...
Data streams have become ubiquitous over the last two decades; potentially unending streams of conti...
Process mining is an emerging data mining task of gathering valuable knowledge out of the huge colle...