A new knowledge-discovery framework, called Data Monitoring and Discovery Triggering (DMDT), is defined, where the user specifies monitors that âwatch" for significant changes to the data and changes to the user-defined system of beliefs. Once these changes are detected, knowledge discovery processes, in the form of data mining queries, are triggered. The proposed framework is the result of an observation, made in the previous work of the authors, that when changes to the user-defined beliefs occur, this means that, there are interesting patterns in the data. In this paper, we present an approach for finding these interesting patterns using data monitoring and belief-driven discovery techniques. Our approach is especially useful in those ap...
We discuss how data mining, patternbases and databases can be integrated into inductive databases, w...
More and more application domains, from financial market analysis to weather prediction, from monito...
Knowledge discovery in databases is the process of applying statistical, machine learning and other ...
A new knowledge-discovery framework, called Data Monitoring and Discovery Triggering (DMDT), is defi...
Organizations are taking advantage of "data-mining" techniques to leverage the vast amounts of data ...
Several pattern discovery methods proposed in the data mining literature have the drawbacks that the...
AbstractData mining is defined as the computational process of analyzing large amounts of data in or...
Every day massive amount of data is generated, collected, and stored in information repositories suc...
Data Mining and Knowledge Discovery is a tested companion investigated logical diary zeroing in on d...
In the present era challenging problems cannot be solved in a reasonable amount of time with convent...
Recently data mining has become more popular in the information industry. It is due to the availabil...
Every day massive amount of data is generated, collected, and stored in information repositories suc...
Data mining (DM) is the process of finding and extracting frequent patterns that can describe the da...
Business databases that have accumulated over many years of business records typically contain a wea...
Up to now, many data mining and knowledge discovery methodologies and process models have been devel...
We discuss how data mining, patternbases and databases can be integrated into inductive databases, w...
More and more application domains, from financial market analysis to weather prediction, from monito...
Knowledge discovery in databases is the process of applying statistical, machine learning and other ...
A new knowledge-discovery framework, called Data Monitoring and Discovery Triggering (DMDT), is defi...
Organizations are taking advantage of "data-mining" techniques to leverage the vast amounts of data ...
Several pattern discovery methods proposed in the data mining literature have the drawbacks that the...
AbstractData mining is defined as the computational process of analyzing large amounts of data in or...
Every day massive amount of data is generated, collected, and stored in information repositories suc...
Data Mining and Knowledge Discovery is a tested companion investigated logical diary zeroing in on d...
In the present era challenging problems cannot be solved in a reasonable amount of time with convent...
Recently data mining has become more popular in the information industry. It is due to the availabil...
Every day massive amount of data is generated, collected, and stored in information repositories suc...
Data mining (DM) is the process of finding and extracting frequent patterns that can describe the da...
Business databases that have accumulated over many years of business records typically contain a wea...
Up to now, many data mining and knowledge discovery methodologies and process models have been devel...
We discuss how data mining, patternbases and databases can be integrated into inductive databases, w...
More and more application domains, from financial market analysis to weather prediction, from monito...
Knowledge discovery in databases is the process of applying statistical, machine learning and other ...