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Institution

Hasso Plattner Institute

FacilityPotsdam, Germany
About: Hasso Plattner Institute is a facility organization based out in Potsdam, Germany. It is known for research contribution in the topics: Business process & Business process modeling. The organization has 1178 authors who have published 2732 publications receiving 58140 citations. The organization is also known as: HPI & Hasso Plattner-Institut.


Papers
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Journal ArticleDOI
TL;DR: An overview of the DBpedia community project is given, including its architecture, technical implementation, maintenance, internationalisation, usage statistics and applications, including DBpedia one of the central interlinking hubs in the Linked Open Data (LOD) cloud.
Abstract: The DBpedia community project extracts structured, multilingual knowledge from Wikipedia and makes it freely available on the Web using Semantic Web and Linked Data technologies. The project extracts knowledge from 111 different language editions of Wikipedia. The largest DBpedia knowledge base which is extracted from the English edition of Wikipedia consists of over 400 million facts that describe 3.7 million things. The DBpedia knowledge bases that are extracted from the other 110 Wikipedia editions together consist of 1.46 billion facts and describe 10 million additional things. The DBpedia project maps Wikipedia infoboxes from 27 different language editions to a single shared ontology consisting of 320 classes and 1,650 properties. The mappings are created via a world-wide crowd-sourcing effort and enable knowledge from the different Wikipedia editions to be combined. The project publishes releases of all DBpedia knowledge bases for download and provides SPARQL query access to 14 out of the 111 language editions via a global network of local DBpedia chapters. In addition to the regular releases, the project maintains a live knowledge base which is updated whenever a page in Wikipedia changes. DBpedia sets 27 million RDF links pointing into over 30 external data sources and thus enables data from these sources to be used together with DBpedia data. Several hundred data sets on the Web publish RDF links pointing to DBpedia themselves and make DBpedia one of the central interlinking hubs in the Linked Open Data (LOD) cloud. In this system report, we give an overview of the DBpedia community project, including its architecture, technical implementation, maintenance, internationalisation, usage statistics and applications.

2,856 citations

Journal ArticleDOI
TL;DR: This article places data fusion into the greater context of data integration, precisely defines the goals of data fusion, namely, complete, concise, and consistent data, and highlights the challenges of data Fusion.
Abstract: The development of the Internet in recent years has made it possible and useful to access many different information systems anywhere in the world to obtain information. While there is much research on the integration of heterogeneous information systems, most commercial systems stop short of the actual integration of available data. Data fusion is the process of fusing multiple records representing the same real-world object into a single, consistent, and clean representation.This article places data fusion into the greater context of data integration, precisely defines the goals of data fusion, namely, complete, concise, and consistent data, and highlights the challenges of data fusion, namely, uncertain and conflicting data values. We give an overview and classification of different ways of fusing data and present several techniques based on standard and advanced operators of the relational algebra and SQL. Finally, the article features a comprehensive survey of data integration systems from academia and industry, showing if and how data fusion is performed in each.

1,797 citations

Book ChapterDOI
26 Jun 2003
TL;DR: The acronyms in this domain are tried to demystify, the state-of-the-art technology is described, and it is argued that BPM could benefit from formal methods/languages.
Abstract: Business Process Management (BPM) includes methods, techniques, and tools to support the design, enactment, management, and analysis of operational business processes. It can be considered as an extension of classical Workflow Management (WFM) systems and approaches. Although the practical relevance of BPM is undisputed, a clear definition of BPM and related acronyms such as BAM, BPA, and STP are missing. Moreover, a clear scientific foundation is missing. In this paper, we try to demystify the acronyms in this domain, describe the state-of-the-art technology, and argue that BPM could benefit from formal methods/languages (cf. Petri nets, process algebras, etc.).

1,480 citations

Book ChapterDOI
Wil M. P. van der Aalst1, Wil M. P. van der Aalst2, A Arya Adriansyah1, Ana Karla Alves de Medeiros3, Franco Arcieri4, Thomas Baier5, Tobias Blickle6, Jagadeesh Chandra Bose1, Peter van den Brand, Ronald Brandtjen, Joos C. A. M. Buijs1, Andrea Burattin7, Josep Carmona8, Malu Castellanos9, Jan Claes10, Jonathan Cook11, Nicola Costantini, Francisco Curbera12, Ernesto Damiani13, Massimiliano de Leoni1, Pavlos Delias, Boudewijn F. van Dongen1, Marlon Dumas14, Schahram Dustdar15, Dirk Fahland1, Diogo R. Ferreira16, Walid Gaaloul17, Frank van Geffen18, Sukriti Goel19, CW Christian Günther, Antonella Guzzo20, Paul Harmon, Arthur H. M. ter Hofstede2, Arthur H. M. ter Hofstede1, John Hoogland, Jon Espen Ingvaldsen, Koki Kato21, Rudolf Kuhn, Akhil Kumar22, Marcello La Rosa2, Fabrizio Maria Maggi1, Donato Malerba23, RS Ronny Mans1, Alberto Manuel, Martin McCreesh, Paola Mello24, Jan Mendling25, Marco Montali26, Hamid Reza Motahari-Nezhad9, Michael zur Muehlen27, Jorge Munoz-Gama8, Luigi Pontieri28, Joel Ribeiro1, A Anne Rozinat, Hugo Seguel Pérez, Ricardo Seguel Pérez, Marcos Sepúlveda29, Jim Sinur, Pnina Soffer30, Minseok Song31, Alessandro Sperduti7, Giovanni Stilo4, Casper Stoel, Keith D. Swenson21, Maurizio Talamo4, Wei Tan12, Christopher Turner32, Jan Vanthienen33, George Varvaressos, Eric Verbeek1, Marc Verdonk34, Roberto Vigo, Jianmin Wang35, Barbara Weber36, Matthias Weidlich37, Ton Weijters1, Lijie Wen35, Michael Westergaard1, Moe Thandar Wynn2 
01 Jan 2012
TL;DR: This manifesto hopes to serve as a guide for software developers, scientists, consultants, business managers, and end-users to increase the maturity of process mining as a new tool to improve the design, control, and support of operational business processes.
Abstract: Process mining techniques are able to extract knowledge from event logs commonly available in today’s information systems. These techniques provide new means to discover, monitor, and improve processes in a variety of application domains. There are two main drivers for the growing interest in process mining. On the one hand, more and more events are being recorded, thus, providing detailed information about the history of processes. On the other hand, there is a need to improve and support business processes in competitive and rapidly changing environments. This manifesto is created by the IEEE Task Force on Process Mining and aims to promote the topic of process mining. Moreover, by defining a set of guiding principles and listing important challenges, this manifesto hopes to serve as a guide for software developers, scientists, consultants, business managers, and end-users. The goal is to increase the maturity of process mining as a new tool to improve the (re)design, control, and support of operational business processes.

1,135 citations

Proceedings Article
03 Jul 2018
TL;DR: This paper introduces a new anomaly detection method—Deep Support Vector Data Description—, which is trained on an anomaly detection based objective and shows the effectiveness of the method on MNIST and CIFAR-10 image benchmark datasets as well as on the detection of adversarial examples of GTSRB stop signs.
Abstract: Despite the great advances made by deep learning in many machine learning problems, there is a relative dearth of deep learning approaches for anomaly detection. Those approaches which do exist involve networks trained to perform a task other than anomaly detection, namely generative models or compression, which are in turn adapted for use in anomaly detection; they are not trained on an anomaly detection based objective. In this paper we introduce a new anomaly detection method—Deep Support Vector Data Description—, which is trained on an anomaly detection based objective. The adaptation to the deep regime necessitates that our neural network and training procedure satisfy certain properties, which we demonstrate theoretically. We show the effectiveness of our method on MNIST and CIFAR-10 image benchmark datasets as well as on the detection of adversarial examples of GTSRB stop signs.

1,070 citations


Authors

Showing all 1193 results

NameH-indexPapersCitations
David Reich13764491397
Erwin P. Bottinger10234242089
Patrick Baudisch7324915537
Mathias Weske5334913207
Christoph Meinel49103413272
Claudia Schurmann4810711848
Tobias Friedrich463357455
Felix Naumann462489364
Holger Giese423178270
Girish N. Nadkarni412588549
Matthias Weidlich412116664
François Guimbretière381055824
Gerard de Melo382184441
Klaus Wehrle383737671
Thomas Brand361204394
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Performance
Metrics
No. of papers from the Institution in previous years
YearPapers
20234
202226
2021253
2020277
2019258
2018230