Classification is a major tool of statistics and machine learning. A classification method first processes a training set of objects with given classes (labels), with the goal of afterward assigning new objects to one of these classes. When running the resulting prediction method on the training data or on test data, it can happen that an object is predicted to lie in a class that differs from its given label. This is sometimes called label bias, and raises the question whether the object was mislabeled. The proposed class map reflects the probability that an object belongs to an alternative class, how far it is from the other objects in its given class, and whether some objects lie far from all classes. The goal is to visualize aspects of ...
Closely related to the concept of Machine Learning, Pattern Recognition is the assignment of an outp...
Classification was traditionally used as an instrument for producing choropleth maps. In our study w...
Abstract. Discriminative and generative methods provide two distinct approaches to machine learning ...
Classification is a major tool of statistics and machine learning. A classification method first pro...
A machine learning classifier is a program that, given an object, outputs a label indicating its cla...
Modern supervised learning algorithms can learn very accurate and complex discriminating functions. ...
Abstract. The Self-Organising Map is a popular unsupervised neural network model which has been used...
<p>The observations along X axis are reordered according to their true class labels. For each observ...
In machine learning, classification is defined as the task of taking an instance of the dataset and ...
We study the effect of imperfect training data labels on the performance of classification methods. ...
Inducing classifiers that make accurate predictions on future data is a driving force for research i...
Visualizing decision boundaries of machine learning classifiers can help in classifier design, testi...
Classification by neural nets and by tree-based methods are powerful tools of machine learning. Ther...
Most multi-class classifiers make their prediction for a test sample by scoring the classes and sel...
Data for training a classification model can be considered to consist of two types of points: easy t...
Closely related to the concept of Machine Learning, Pattern Recognition is the assignment of an outp...
Classification was traditionally used as an instrument for producing choropleth maps. In our study w...
Abstract. Discriminative and generative methods provide two distinct approaches to machine learning ...
Classification is a major tool of statistics and machine learning. A classification method first pro...
A machine learning classifier is a program that, given an object, outputs a label indicating its cla...
Modern supervised learning algorithms can learn very accurate and complex discriminating functions. ...
Abstract. The Self-Organising Map is a popular unsupervised neural network model which has been used...
<p>The observations along X axis are reordered according to their true class labels. For each observ...
In machine learning, classification is defined as the task of taking an instance of the dataset and ...
We study the effect of imperfect training data labels on the performance of classification methods. ...
Inducing classifiers that make accurate predictions on future data is a driving force for research i...
Visualizing decision boundaries of machine learning classifiers can help in classifier design, testi...
Classification by neural nets and by tree-based methods are powerful tools of machine learning. Ther...
Most multi-class classifiers make their prediction for a test sample by scoring the classes and sel...
Data for training a classification model can be considered to consist of two types of points: easy t...
Closely related to the concept of Machine Learning, Pattern Recognition is the assignment of an outp...
Classification was traditionally used as an instrument for producing choropleth maps. In our study w...
Abstract. Discriminative and generative methods provide two distinct approaches to machine learning ...