The mainstream data mining faces critical challenges and lacks of soft power in solving real-world complex problems when deployed. Following the paradigm shift from 'data mining' to 'knowledge discovery', we believe much more thorough efforts are essential for promoting the wide acceptance and employment of knowledge discovery in real-world smart decision making. To this end, we expect a new paradigm shift from 'data-centered knowledge discovery' to 'domain-driven actionable knowledge discovery'. In the domain-driven actionable knowledge discovery, ubiquitous intelligence must be involved and meta-synthesized into the mining process, and an actionable knowledge discovery-based problem-solving system is formed as the space for data mining. T...
Abstract—Most data mining algorithms and tools stop at the mining and delivery of patterns satisfyin...
[Excerpt] Following the success of SIGKDD-DDDM2007, ICDM-DDDM2008, ICDM-DDDM2009, and ICDMDDDM2010, ...
from classification to pattern mining, reached considerable levels of efficiency, and their extensio...
Traditional data mining research mainly focus]es on developing, demonstrating, and pushing the use o...
Abstract—Traditional data mining research mainly focus]es on developing, demonstrating, and pushing ...
Abstract The mainstream data mining faces critical challenges and lacks of soft power in solving rea...
Extant data mining is based on data-driven methodologies. It either views data mining as an autonomo...
Traditionally, data mining is an autonomous data-driven trial-and-error process. Its typical task is...
In the preceding decade data mining has came into sight as one of the largely energetic areas in inf...
In this chapter, data mining and knowledge discovery (DMKD) is presented with basic concepts, a brie...
Actionable knowledge discovery Is one of Grand Challenges in KDD. To this end, many methodologies ha...
The ideal situation for a Data Mining or Knowledge Discovery system would be for the user to be able...
Actionable knowledge has been qualitatively and intensively studied in the social sciences. Its marr...
Data mining and knowledge discovery in databases have been attracting a foremost amount of research,...
AbstractData mining is defined as the computational process of analyzing large amounts of data in or...
Abstract—Most data mining algorithms and tools stop at the mining and delivery of patterns satisfyin...
[Excerpt] Following the success of SIGKDD-DDDM2007, ICDM-DDDM2008, ICDM-DDDM2009, and ICDMDDDM2010, ...
from classification to pattern mining, reached considerable levels of efficiency, and their extensio...
Traditional data mining research mainly focus]es on developing, demonstrating, and pushing the use o...
Abstract—Traditional data mining research mainly focus]es on developing, demonstrating, and pushing ...
Abstract The mainstream data mining faces critical challenges and lacks of soft power in solving rea...
Extant data mining is based on data-driven methodologies. It either views data mining as an autonomo...
Traditionally, data mining is an autonomous data-driven trial-and-error process. Its typical task is...
In the preceding decade data mining has came into sight as one of the largely energetic areas in inf...
In this chapter, data mining and knowledge discovery (DMKD) is presented with basic concepts, a brie...
Actionable knowledge discovery Is one of Grand Challenges in KDD. To this end, many methodologies ha...
The ideal situation for a Data Mining or Knowledge Discovery system would be for the user to be able...
Actionable knowledge has been qualitatively and intensively studied in the social sciences. Its marr...
Data mining and knowledge discovery in databases have been attracting a foremost amount of research,...
AbstractData mining is defined as the computational process of analyzing large amounts of data in or...
Abstract—Most data mining algorithms and tools stop at the mining and delivery of patterns satisfyin...
[Excerpt] Following the success of SIGKDD-DDDM2007, ICDM-DDDM2008, ICDM-DDDM2009, and ICDMDDDM2010, ...
from classification to pattern mining, reached considerable levels of efficiency, and their extensio...