Abstract—Most data mining algorithms and tools stop at the mining and delivery of patterns satisfying expected technical interestingness. There are often many patterns mined but business people either are not interested in them or do not know what follow-up actions to take to support their business decisions. This issue has seriously affected the widespread employment of advanced data mining techniques in greatly promoting enterprise operational quality and productivity. In this paper, we present a formal view of actionable knowledge discovery (AKD) from the system and decision-making perspectives. AKD is a closed optimization problem-solving process from problem definition, framework/model design to actionable pattern discovery, and is des...
Data mining promises to discover valid and potentially useful patterns in data. Often, discovered pa...
Abstract—Enterprise data mining applications often involve complex data such as multiple large heter...
In many business contexts, the ultimate goal of knowledge discovery is not the knowledge itself, but...
Most data mining algorithms and tools stop at the mining and delivery of patterns satisfying expecte...
Data mining at enterprise level operates on huge amount of data such as government transactions, ba...
Actionable knowledge discovery Is one of Grand Challenges in KDD. To this end, many methodologies ha...
Data mining is a process of obtaining trends or patterns in historical data. Such trends form busine...
Abstract—Traditional data mining research mainly focus]es on developing, demonstrating, and pushing ...
The main goal of Knowledge Discovery inDatabases is to find interesting and usable patterns, meaning...
Traditional data mining research mainly focus]es on developing, demonstrating, and pushing the use o...
The mainstream data mining faces critical challenges and lacks of soft power in solving real-world c...
Knowledge Discovery in Databases (KDD) is the process of extracting previously unknown, hidden and i...
Extant data mining is based on data-driven methodologies. It either views data mining as an autonomo...
Actionable knowledge has been qualitatively and intensively studied in the social sciences. Its marr...
Abstract—Enterprise data mining applications often involve complex data such as multiple large heter...
Data mining promises to discover valid and potentially useful patterns in data. Often, discovered pa...
Abstract—Enterprise data mining applications often involve complex data such as multiple large heter...
In many business contexts, the ultimate goal of knowledge discovery is not the knowledge itself, but...
Most data mining algorithms and tools stop at the mining and delivery of patterns satisfying expecte...
Data mining at enterprise level operates on huge amount of data such as government transactions, ba...
Actionable knowledge discovery Is one of Grand Challenges in KDD. To this end, many methodologies ha...
Data mining is a process of obtaining trends or patterns in historical data. Such trends form busine...
Abstract—Traditional data mining research mainly focus]es on developing, demonstrating, and pushing ...
The main goal of Knowledge Discovery inDatabases is to find interesting and usable patterns, meaning...
Traditional data mining research mainly focus]es on developing, demonstrating, and pushing the use o...
The mainstream data mining faces critical challenges and lacks of soft power in solving real-world c...
Knowledge Discovery in Databases (KDD) is the process of extracting previously unknown, hidden and i...
Extant data mining is based on data-driven methodologies. It either views data mining as an autonomo...
Actionable knowledge has been qualitatively and intensively studied in the social sciences. Its marr...
Abstract—Enterprise data mining applications often involve complex data such as multiple large heter...
Data mining promises to discover valid and potentially useful patterns in data. Often, discovered pa...
Abstract—Enterprise data mining applications often involve complex data such as multiple large heter...
In many business contexts, the ultimate goal of knowledge discovery is not the knowledge itself, but...