The Iris dataset is a well known dataset containing information on three different types of Iris flowers. A typical and popular method for solving classification problems on datasets such as the Iris set is the support vector machine (SVM). In order to do so the dataset is separated in a set used for training and a set used for testing. The error rate, after training, for the training set should be lower than the error rate on the test set. However, in this paper we show that when solving the classification problem for the Iris dataset with SVMs this is not the case. Therefore, we provide an analysis of the Iris dataset and the classification models in order to find the origin of this interesting observation
Support Vector Machines (SVMs) have found many applications in various fields. They have been introd...
This paper describes an iris verification project focused on design and performance evaluation under...
Proceeding of the 6th International Conference on Information & Communication Technology and Systems...
The Iris dataset is a well known dataset containing information on three different types of Iris flo...
Abstract: In this paper, we present a new method to deal with the Iris data classification prob-lem ...
In machine learning, there are three type of learning branch that can used in classification procedu...
Data mining is known as the process of detection concerning patterns from essential amounts of data....
Over the past three years, iris based personal identification has gained considerable attention both...
peer reviewedIris recognition is a well-known biometric identification system which distinguishes au...
Classical iris biometric systems assume ideal environmental conditions and cooperative users for ima...
In recent years, with the increasing demands of security in our networked society, biometric system...
In machine learning, there are three type of learning branch that can used in classifica...
Iris is a genus of 260-300 species of flowering plants with striking flower colors and has a dominan...
In this study, we apply two classification algorithm methods, namely the Gaussian naïve Bayes (GNB) ...
In recent years, with the increasing demands of security in our networked society, biometric system...
Support Vector Machines (SVMs) have found many applications in various fields. They have been introd...
This paper describes an iris verification project focused on design and performance evaluation under...
Proceeding of the 6th International Conference on Information & Communication Technology and Systems...
The Iris dataset is a well known dataset containing information on three different types of Iris flo...
Abstract: In this paper, we present a new method to deal with the Iris data classification prob-lem ...
In machine learning, there are three type of learning branch that can used in classification procedu...
Data mining is known as the process of detection concerning patterns from essential amounts of data....
Over the past three years, iris based personal identification has gained considerable attention both...
peer reviewedIris recognition is a well-known biometric identification system which distinguishes au...
Classical iris biometric systems assume ideal environmental conditions and cooperative users for ima...
In recent years, with the increasing demands of security in our networked society, biometric system...
In machine learning, there are three type of learning branch that can used in classifica...
Iris is a genus of 260-300 species of flowering plants with striking flower colors and has a dominan...
In this study, we apply two classification algorithm methods, namely the Gaussian naïve Bayes (GNB) ...
In recent years, with the increasing demands of security in our networked society, biometric system...
Support Vector Machines (SVMs) have found many applications in various fields. They have been introd...
This paper describes an iris verification project focused on design and performance evaluation under...
Proceeding of the 6th International Conference on Information & Communication Technology and Systems...