A number of supervised learning methods have been introduced in the last decade. Unfortunately, the last comprehensive empirical evaluation of supervised learning was the Statlog Project in the early 90’s. We present a large-scale empirical comparison between ten supervised learning methods: SVMs, neural nets, logistic regression, naive bayes, memory-based learning, random forests, decision trees, bagged trees, boosted trees, and boosted stumps. We also examine the effect that calibrating the models via Platt Scaling and Isotonic Regression has on their performance. An important aspect of our study is the use of a variety of performance criteria to evaluate the learning methods. 1
In recent years, the world's population is increasingly demanding to predict the future with certain...
In recent years, the world's population is increasingly demanding to predict the future with certain...
In recent years, the world's population is increasingly demanding to predict the future with certain...
We present results from a large-scale empirical comparison between ten learning methods: SVMs, neur...
Supervised learning is a machine learning technique used for creating a data prediction model. This ...
Data mining as a formal discipline is only two decades old, but it has registered phenomenal develop...
In this paper we perform an empirical evaluation of supervised learning on high-dimensional data. We...
This thesis examines the performance of the support vector machine and the random forest models in t...
This thesis examines the performance of the support vector machine and the random forest models in t...
In this paper we explore several issues relevant to the benchmarking and comparison of machine learn...
In this paper we explore several issues relevant to the benchmarking and comparison of machine learn...
In this paper we explore several issues relevant to the benchmarking and comparison of machine learn...
We empirically study the relationship between supervised and multiple instance (MI) learning. Algori...
. Twenty-two decision tree, nine statistical, and two neural network algorithms are compared on thir...
Abstract. Twenty-two decision tree, nine statistical, and two neural network algorithms are compared...
In recent years, the world's population is increasingly demanding to predict the future with certain...
In recent years, the world's population is increasingly demanding to predict the future with certain...
In recent years, the world's population is increasingly demanding to predict the future with certain...
We present results from a large-scale empirical comparison between ten learning methods: SVMs, neur...
Supervised learning is a machine learning technique used for creating a data prediction model. This ...
Data mining as a formal discipline is only two decades old, but it has registered phenomenal develop...
In this paper we perform an empirical evaluation of supervised learning on high-dimensional data. We...
This thesis examines the performance of the support vector machine and the random forest models in t...
This thesis examines the performance of the support vector machine and the random forest models in t...
In this paper we explore several issues relevant to the benchmarking and comparison of machine learn...
In this paper we explore several issues relevant to the benchmarking and comparison of machine learn...
In this paper we explore several issues relevant to the benchmarking and comparison of machine learn...
We empirically study the relationship between supervised and multiple instance (MI) learning. Algori...
. Twenty-two decision tree, nine statistical, and two neural network algorithms are compared on thir...
Abstract. Twenty-two decision tree, nine statistical, and two neural network algorithms are compared...
In recent years, the world's population is increasingly demanding to predict the future with certain...
In recent years, the world's population is increasingly demanding to predict the future with certain...
In recent years, the world's population is increasingly demanding to predict the future with certain...