This paper analyses the complexity of rule selection for supervised learning in distributed scenarios. The selection of rules is usually guided by a utility measure such as predictive accuracy or weighted relative accuracy. Other examples are support and confidence, known from association rule mining. A common strategy to tackle rule selection from distributed data is to evaluate rules locally on each dataset
Recently, several authors have advocated the use of rule learning algorithms to model multi-label da...
With the existence of many large transaction databases, the huge amounts of data, the high scalabili...
This paper motivates and precisely formulates the problem of learning from distributed data; descri...
This paper analyses the tractability of rule selection for supervised learning in distributed scenar...
This paper analyses the complexity of rule selection for supervised learning in distributed scenario...
Machine-learning methods are becoming increasingly popular for automated data analysis. However, sta...
Separate-and-conquer or covering rule learning algorithms may be viewed as a technique for using loc...
International audienceA procedure to select a supervised rule for multiclass problem from a labeled ...
In the data mining field, association rules are discovered having domain knowledge specified as a mi...
A big organization may have multiple branches spread across different locations. Processing of data ...
Most algorithms for learning and pattern discovery in data assume that all the needed data is availa...
We discuss a procedure which extracts statistical and entropic information from data in order to dis...
AbstractAssociation Rule Mining (ARM) is a popular and well researched method for discovering intere...
This article presents a new rule discovery algorithm named PLCG that can find simple, robust partia...
In many areas of daily life (e.g. in e-commerce or social networks), massive amounts of data are col...
Recently, several authors have advocated the use of rule learning algorithms to model multi-label da...
With the existence of many large transaction databases, the huge amounts of data, the high scalabili...
This paper motivates and precisely formulates the problem of learning from distributed data; descri...
This paper analyses the tractability of rule selection for supervised learning in distributed scenar...
This paper analyses the complexity of rule selection for supervised learning in distributed scenario...
Machine-learning methods are becoming increasingly popular for automated data analysis. However, sta...
Separate-and-conquer or covering rule learning algorithms may be viewed as a technique for using loc...
International audienceA procedure to select a supervised rule for multiclass problem from a labeled ...
In the data mining field, association rules are discovered having domain knowledge specified as a mi...
A big organization may have multiple branches spread across different locations. Processing of data ...
Most algorithms for learning and pattern discovery in data assume that all the needed data is availa...
We discuss a procedure which extracts statistical and entropic information from data in order to dis...
AbstractAssociation Rule Mining (ARM) is a popular and well researched method for discovering intere...
This article presents a new rule discovery algorithm named PLCG that can find simple, robust partia...
In many areas of daily life (e.g. in e-commerce or social networks), massive amounts of data are col...
Recently, several authors have advocated the use of rule learning algorithms to model multi-label da...
With the existence of many large transaction databases, the huge amounts of data, the high scalabili...
This paper motivates and precisely formulates the problem of learning from distributed data; descri...