In this paper, we introduce a neural network-based decision table algorithm. We focus on the implementation details of the decision table algorithm when it is constructed using the neural network. Decision tables are simple supervised classifiers which, Kohavi demonstrated, can outperform state-of-the-art classifiers such as C4.5. We couple this power with the efficiency and flexibility of a binary associative-memory neural network. Initially, we demonstrate how the binary associative-memory neural network can form the decision table index to map between attribute values and data records and subsequently we show how two attribute selection algorithms can be used to pre-select attributes for this decision table. The attribute selection algor...
This paper investigates the use of neural networks for the acquisition of selectional preferences. I...
Business users and analysts commonly use spread-sheets and 2D plots to analyze and understand their ...
Deep neural networks achieve high predictive accuracy by learning latent representations of complex ...
In this paper, we introduce a neural network-based decision table algorithm. We focus on the impleme...
Business users and analysts commonly use spreadsheets and 2D plots to analyze and understand their d...
The article concerns the problem of classification based on independent data sets—local decision tab...
This paper documents an effort to design and implement a neural network-based, automatic classificat...
This thesis proposes a novel way to learn a set of the Boolean rules in disjunctive normal form as a...
Artificial Neural Networks (ANNs) have proved both a pop-ular and powerful technique for pattern rec...
International audienceThis paper investigates the use of neural networks for the acquisition of sele...
The decision tree learning algorithms, e.g., C5, are good at dataset classification. But those algor...
In this paper we present comparative study of two frequently used methods for prediction and classif...
Since the performance of a character recognition system is mainly determined by the classifier, we i...
SIGLEAvailable from British Library Document Supply Centre- DSC:9261.954(WBS-RP--61) / BLDSC - Briti...
Abstract. We evaluate the power of decision tables as a hypothesis space for supervised learning alg...
This paper investigates the use of neural networks for the acquisition of selectional preferences. I...
Business users and analysts commonly use spread-sheets and 2D plots to analyze and understand their ...
Deep neural networks achieve high predictive accuracy by learning latent representations of complex ...
In this paper, we introduce a neural network-based decision table algorithm. We focus on the impleme...
Business users and analysts commonly use spreadsheets and 2D plots to analyze and understand their d...
The article concerns the problem of classification based on independent data sets—local decision tab...
This paper documents an effort to design and implement a neural network-based, automatic classificat...
This thesis proposes a novel way to learn a set of the Boolean rules in disjunctive normal form as a...
Artificial Neural Networks (ANNs) have proved both a pop-ular and powerful technique for pattern rec...
International audienceThis paper investigates the use of neural networks for the acquisition of sele...
The decision tree learning algorithms, e.g., C5, are good at dataset classification. But those algor...
In this paper we present comparative study of two frequently used methods for prediction and classif...
Since the performance of a character recognition system is mainly determined by the classifier, we i...
SIGLEAvailable from British Library Document Supply Centre- DSC:9261.954(WBS-RP--61) / BLDSC - Briti...
Abstract. We evaluate the power of decision tables as a hypothesis space for supervised learning alg...
This paper investigates the use of neural networks for the acquisition of selectional preferences. I...
Business users and analysts commonly use spread-sheets and 2D plots to analyze and understand their ...
Deep neural networks achieve high predictive accuracy by learning latent representations of complex ...