Organizations share data in a cross-organizational context when they have the goal to derive additional knowledge by aggregating different data sources. The collaborations considered in this article are short-lived and ad hoc, that is, they should be set up in a few minutes at most (e.g., in emergency scenarios). The data sources are located in different domains and are not publicly accessible. When a collaboration is finished, it is however unclear which exchanges happened. This could lead to possible disputes when dishonest organizations are present. The receipt of requests/responses could be falsely denied or their content could be point of discussion. In order to prevent such disputes afterwards, a logging mechanism is needed which gene...
Machine Learning systems rely on data for training, input and ongoing feedback and validation. Data ...
Nowadays, organizations need to set higher and higher business goals in order to cope with market re...
Collaborative networked organizations (CNOs) strive to achieve a common goal. Collaboration within C...
Organizations share data in a cross-organizational context when they have the goal to derive additio...
Organizations nowadays are largely computerized, with a mixture of internal and external services pr...
The rise of distributed ledger technologies, such as R3 Corda, Hyperledger Fabric and Ethereum, has ...
Performance of complex analytics \& AI algorithms typically involves large amounts of data. The data...
Nowadays, information technologies provide users ability to work with anyone, at any time, from ever...
As data analytics is used in business to increase profits, organizations use it to pursue their goal...
The complex societal problems that we face today require unprecedented collaboration and evidence-ba...
Since the advent of Bitcoin as the first decentralized digital currency in 2008, a plethora of distr...
Cross-collaboration processes are decentralized by nature and their centralized monitoring can trigg...
Machine Learning systems rely on data for training, input and ongoing feedback and validation. Data ...
Nowadays, organizations need to set higher and higher business goals in order to cope with market re...
Collaborative networked organizations (CNOs) strive to achieve a common goal. Collaboration within C...
Organizations share data in a cross-organizational context when they have the goal to derive additio...
Organizations nowadays are largely computerized, with a mixture of internal and external services pr...
The rise of distributed ledger technologies, such as R3 Corda, Hyperledger Fabric and Ethereum, has ...
Performance of complex analytics \& AI algorithms typically involves large amounts of data. The data...
Nowadays, information technologies provide users ability to work with anyone, at any time, from ever...
As data analytics is used in business to increase profits, organizations use it to pursue their goal...
The complex societal problems that we face today require unprecedented collaboration and evidence-ba...
Since the advent of Bitcoin as the first decentralized digital currency in 2008, a plethora of distr...
Cross-collaboration processes are decentralized by nature and their centralized monitoring can trigg...
Machine Learning systems rely on data for training, input and ongoing feedback and validation. Data ...
Nowadays, organizations need to set higher and higher business goals in order to cope with market re...
Collaborative networked organizations (CNOs) strive to achieve a common goal. Collaboration within C...