In predictive data mining tasks, we should account for autocorrelations of both the independent variables and the dependent variable, which we can observe in neighborhood of a target node and that same node. The prediction on a target node should be based on the value of the neighbours which might even be unavailable. To address this problem, the values of the neighbours should be inferred collectively. We present a novel computational solution to perform collective inferences in a network regression task. We define an iterative algorithm, in order to make regression inferences about predictions of multiple nodes simultaneously and feed back the more reliable predictions made by the previous models in the labeled network. Experiments invest...
Spatial autocorrelation is the correlation among data values, strictly due to the relative location ...
In recent years, improvement in ubiquitous technologies and sensor networks have motivated the appli...
The network autocorrelation model has been the workhorse for estimating and testing the strength of ...
In predictive data mining tasks, we should account for autocorrelations of both the independent vari...
In predictive data mining tasks, we should account for auto-correlations of both the independent var...
Sensor networks, communication and financial networks, web and social networks are becoming increasi...
Network data describe entities represented by nodes, which may be connected with (related to) each o...
Regression inference in network data is a challenging task in machine learning and data mining. Netw...
Abstract Network data describe entities represented by nodes, which may be con-nected with (related ...
Collective inference is widely used to improve classification in network datasets. However, despite ...
Collective inference is widely used to improve classification in network datasets. However, despite ...
Active learning is a promising machine learning paradigm for querying oracles and obtaining actual l...
Within-network regression addresses the task of regression in partially labeled networked data where...
Spatial autocorrelation is the correlation among data values which is strictly due to the relative s...
Abstract. Spatial autocorrelation is the correlation among data val-ues, strictly due to the relativ...
Spatial autocorrelation is the correlation among data values, strictly due to the relative location ...
In recent years, improvement in ubiquitous technologies and sensor networks have motivated the appli...
The network autocorrelation model has been the workhorse for estimating and testing the strength of ...
In predictive data mining tasks, we should account for autocorrelations of both the independent vari...
In predictive data mining tasks, we should account for auto-correlations of both the independent var...
Sensor networks, communication and financial networks, web and social networks are becoming increasi...
Network data describe entities represented by nodes, which may be connected with (related to) each o...
Regression inference in network data is a challenging task in machine learning and data mining. Netw...
Abstract Network data describe entities represented by nodes, which may be con-nected with (related ...
Collective inference is widely used to improve classification in network datasets. However, despite ...
Collective inference is widely used to improve classification in network datasets. However, despite ...
Active learning is a promising machine learning paradigm for querying oracles and obtaining actual l...
Within-network regression addresses the task of regression in partially labeled networked data where...
Spatial autocorrelation is the correlation among data values which is strictly due to the relative s...
Abstract. Spatial autocorrelation is the correlation among data val-ues, strictly due to the relativ...
Spatial autocorrelation is the correlation among data values, strictly due to the relative location ...
In recent years, improvement in ubiquitous technologies and sensor networks have motivated the appli...
The network autocorrelation model has been the workhorse for estimating and testing the strength of ...