Conference
Data and Knowledge Engineering
About: Data and Knowledge Engineering is an academic conference. The conference publishes majorly in the area(s): Computer science & Relational database. Over the lifetime, 1755 publications have been published by the conference receiving 69850 citations.
Topics: Computer science, Relational database, Query optimization, Ontology (information science), Database design
Papers published on a yearly basis
Papers
1 Mar 1998
TL;DR: The paradigm shift from a transfer view to a modeling view is discussed and two approaches which considerably shaped research in Knowledge Engineering are described: Role-limiting Methods and Generic Tasks.
Abstract: This paper gives an overview of the development of the field of Knowledge Engineering over the last 15 years. We discuss the paradigm shift from a transfer view to a modeling view and describe two approaches which considerably shaped research in Knowledge Engineering: Role-limiting Methods and Generic Tasks. To illustrate various concepts and methods which evolved in recent years we describe three modeling frameworks: CommonKADS, MIKE and PROTEGE-II. This description is supplemented by discussing some important methodological developments in more detail: specification languages for knowledge-based systems, problem-solving methods and ontologies. We conclude by outlining the relationship of Knowledge Engineering to Software Engineering, Information Integration and Knowledge Management.
3,915 citations
1 Jan 2007
TL;DR: A new density-based clustering algorithm based on DBSCAN, which has the ability of discovering clusters according to non-spatial, spatial and temporal values of the objects, is presented and an implementation of the algorithm is shown by using this data warehouse and the data mining results are presented.
Abstract: This paper presents a new density-based clustering algorithm, ST-DBSCAN, which is based on DBSCAN. We propose three marginal extensions to DBSCAN related with the identification of (i) core objects, (ii) noise objects, and (iii) adjacent clusters. In contrast to the existing density-based clustering algorithms, our algorithm has the ability of discovering clusters according to non-spatial, spatial and temporal values of the objects. In this paper, we also present a spatial-temporal data warehouse system designed for storing and clustering a wide range of spatial-temporal data. We show an implementation of our algorithm by using this data warehouse and present the data mining results.
1,424 citations
1 Nov 2003
TL;DR: This paper introduces the concept of workflow mining and presents a common format for workflow logs, and discusses the most challenging problems and present some of the workflow mining approaches available today.
Abstract: Many of today's information systems are driven by explicit process models. Workflow management systems, but also ERP, CRM, SCM, and B2B, are configured on the basis of a workflow model specifying the order in which tasks need to be executed. Creating a workflow design is a complicated time-consuming process and typically there are discrepancies between the actual workflow processes and the processes as perceived by the management. To support the design of workflows, we propose the use of workflow mining. Starting point for workflow mining is a so-called "workflow log" containing information about the workflow process as it is actually being executed. In this paper, we introduce the concept of workflow mining and present a common format for workflow logs. Then we discuss the most challenging problems and present some of the workflow mining approaches available today.
1,241 citations
1 May 2005
TL;DR: In this paper, case handling is introduced as a new paradigm for supporting flexible business processes by comparing it to workflow management as the traditional way to support business processes.
Abstract: Case handling is a new paradigm for supporting flexible and knowledge intensive business processes. It is strongly based on data as the typical product of these processes. Unlike workflow management, which uses predefined process control structures to determine what should be done during a workflow process, case handling focuses on what can be done to achieve a business goal. In case handling, the knowledge worker in charge of a particular case actively decides on how the goal of that case is reached, and the role of a case handling system is assisting rather than guiding her in doing so. In this paper, case handling is introduced as a new paradigm for supporting flexible business processes. It is motivated by comparing it to workflow management as the traditional way to support business processes. The main entities of case handling systems are identified and classified in a meta model. Finally, the basic functionality and usage of a case handling system is illustrated by an example.
898 citations
1 Nov 2007
TL;DR: A clustering algorithm based on k-mean paradigm that works well for data with mixed numeric and categorical features is presented and a new cost function and distance measure based on co-occurrence of values is proposed.
Abstract: Use of traditional k-mean type algorithm is limited to numeric data. This paper presents a clustering algorithm based on k-mean paradigm that works well for data with mixed numeric and categorical features. We propose new cost function and distance measure based on co-occurrence of values. The measures also take into account the significance of an attribute towards the clustering process. We present a modified description of cluster center to overcome the numeric data only limitation of k-mean algorithm and provide a better characterization of clusters. The performance of this algorithm has been studied on real world data sets. Comparisons with other clustering algorithms illustrate the effectiveness of this approach.
772 citations
Performance Metrics
| Year | Papers |
|---|---|
| 2022 | 2 |
| 2021 | 34 |
| 2020 | 38 |
| 2019 | 45 |
| 2018 | 58 |
| 2017 | 52 |