Machine learning techniques, such as neural networks and rule induction, are becoming popular alternatives to traditional statistical techniques for solving classification problems. However, much of the research has been devoted to comparing performances upon sample data sets, with little attention paid to why a technique sometimes outperforms another. This study describes a simulation, which examined the effects of factors with theoretical support for their differential impacts upon three machine learning techniques (a backpropagation neural network and two rule induction techniques: CART and ID3) and discriminant analysis. The results demonstrate significant differences in the techniques' abilities to reduce overfitting, to form diagonal ...
Machine learning algorithms are used to train the machine to learn on its own and improve from exper...
Machine Learning is a branch of artificial intelligence focused on building applications that learn ...
The following thesis explores the impact of the dataset distributional prop- erties on classificatio...
Machine learning has consistently proved to be useful in many applications. An integral facet allowi...
In the field of machine learning classification is one of the most common types to be deployed in so...
There are several aspects that might influence the performance achieved by existing learning systems...
This paper presents an empirical comparison of three classification methods: neural networks, decisi...
This article presents a neural network simulation ofthe out-group homogeneity effect (OHE). The mode...
It is difficult if not impossible to appropriately and effectively select from among the vast pool o...
suggests a reasonable line of research: find algorithms that can search the hypothesis class better....
The mean result of machine learning models is determined by utilizing k-fold cross-validation. The a...
In this article we analyze the effect of class distribution on classifier learning. We begin by des...
The current thesis investigates data-driven simulation decision-making with field-quality consumer d...
Machine learning is a popular way to find patterns and relationships in high complex datasets. With ...
This chapter aims to introduce the common methods and practices of statistical machine learning tech...
Machine learning algorithms are used to train the machine to learn on its own and improve from exper...
Machine Learning is a branch of artificial intelligence focused on building applications that learn ...
The following thesis explores the impact of the dataset distributional prop- erties on classificatio...
Machine learning has consistently proved to be useful in many applications. An integral facet allowi...
In the field of machine learning classification is one of the most common types to be deployed in so...
There are several aspects that might influence the performance achieved by existing learning systems...
This paper presents an empirical comparison of three classification methods: neural networks, decisi...
This article presents a neural network simulation ofthe out-group homogeneity effect (OHE). The mode...
It is difficult if not impossible to appropriately and effectively select from among the vast pool o...
suggests a reasonable line of research: find algorithms that can search the hypothesis class better....
The mean result of machine learning models is determined by utilizing k-fold cross-validation. The a...
In this article we analyze the effect of class distribution on classifier learning. We begin by des...
The current thesis investigates data-driven simulation decision-making with field-quality consumer d...
Machine learning is a popular way to find patterns and relationships in high complex datasets. With ...
This chapter aims to introduce the common methods and practices of statistical machine learning tech...
Machine learning algorithms are used to train the machine to learn on its own and improve from exper...
Machine Learning is a branch of artificial intelligence focused on building applications that learn ...
The following thesis explores the impact of the dataset distributional prop- erties on classificatio...