This work proposes a general approach to optimize the time required to perform a choice in a decision support system, with particular reference to image processing tasks with neighborhood analysis. The decisions are encoded in a decision table paradigm that allows multiple equivalent procedures to be performed for the same situation. An automatic synthesis of the optimal decision tree is implemented in order to generate the most efficient order in which conditions should be considered to minimize the computational requirements.To test out approach, the connected component labeling scenario is considered. Results will show the speedup introduced using an automatically built decision system able to efficiently analyze and explore the neighbor...
A new algorithm for constructing optimal dyadic decision trees was recently introduced, analyzed, an...
AbstractA dynamic programming algorithm for converting decision tables to optimal decision trees is ...
The objective of this thesis is to design a new classification-tree algorithm which will outperform ...
This work proposes a general approach to optimize the time required to perform a choice in a decisio...
In this paper we present a novel algorithm to synthesize an optimal decision tree from OR-decision t...
We propose a new efficient approach for neighborhood exploration, optimized with decision tables and...
In this paper we define a new paradigm for 8-connection labeling, which employes a general approach ...
In this paper we present a novel dynamic programming algorithm to synthesize an optimal decision tre...
International audienceConnected component labeling (CCL) is one of the most fundamental operations i...
The classification of large dimensional data sets arising from the merging of remote sensing data wi...
Construction algorithms of optimum and near-optimum decision trees are surveyed under two optimality...
In this paper, we propose a fast labeling algorithm based on block-based concepts. Because the numbe...
Machine learning algorithms are used to learn models capable of predicting on unseen data. In recent...
Decision tree learning is a widely used approach in machine learning, favoured in applications that ...
A new algorithm for development of quasi-optimal decision trees, based on the Bayes theorem, has bee...
A new algorithm for constructing optimal dyadic decision trees was recently introduced, analyzed, an...
AbstractA dynamic programming algorithm for converting decision tables to optimal decision trees is ...
The objective of this thesis is to design a new classification-tree algorithm which will outperform ...
This work proposes a general approach to optimize the time required to perform a choice in a decisio...
In this paper we present a novel algorithm to synthesize an optimal decision tree from OR-decision t...
We propose a new efficient approach for neighborhood exploration, optimized with decision tables and...
In this paper we define a new paradigm for 8-connection labeling, which employes a general approach ...
In this paper we present a novel dynamic programming algorithm to synthesize an optimal decision tre...
International audienceConnected component labeling (CCL) is one of the most fundamental operations i...
The classification of large dimensional data sets arising from the merging of remote sensing data wi...
Construction algorithms of optimum and near-optimum decision trees are surveyed under two optimality...
In this paper, we propose a fast labeling algorithm based on block-based concepts. Because the numbe...
Machine learning algorithms are used to learn models capable of predicting on unseen data. In recent...
Decision tree learning is a widely used approach in machine learning, favoured in applications that ...
A new algorithm for development of quasi-optimal decision trees, based on the Bayes theorem, has bee...
A new algorithm for constructing optimal dyadic decision trees was recently introduced, analyzed, an...
AbstractA dynamic programming algorithm for converting decision tables to optimal decision trees is ...
The objective of this thesis is to design a new classification-tree algorithm which will outperform ...