Książka New Method to Improve Mining of Multi-Class Imbalanced Data Marwa Al-Roby

New Method to Improve Mining of Multi-Class Imbalanced Data

Język: Angielski
Oprawa: Miękka
Dostępność: Dostępna u dostawcy
Wysyłamy za 5-8 dni
135.06
Class imbalance is one of the challenging problems for data mining and machine learning techniques....

Informacje o książce

Język
Angielski
Oprawa
Książka - Miękka
Data wydania
2017
strony
80
EAN
9783330018464
Enbook ID
15875345
Waga
137
Wymiary
150 x 220 x 5

Pełny opis

Class imbalance is one of the challenging problems for data mining and machine learning techniques. The data in real-world applications often has imbalanced class distribution. That is occur when most examples are belong to a majority class and few example belong to a minority class. In this case, standard classifiers tend to classify all examples as a majority class and completely ignore the minority class. For this problem, researchers proposed a lot of solutions at both data and algorithmic levels. Most efforts concentrate on binary class problems. However, binary class is not the only scenario where the class imbalance problem prevails. In the case of multi-class data sets, it is much more difficult to define the majority and minority classes. Hence, multi class classification in imbalanced data sets remains an important topic of research. In our Book, we proposed new approach based on SOMTE (Synthetic Minority Over-sampling TEchnique) and clustering which is able to deal with imbalanced data problem involving multiple classes. We implemented our approach by using open source machine learning tools: Weka, and RapidMiner.

Możesz być zainteresowany

138.74

Watchmaker's Wife

Frank Richard Stockton
82.96

Your Life is Medicine

Kristen Schneider
139.04
55.67
43.32

The Second Funeral of Napoleon

William Makepeace Thackeray
51.09
98.01

Witch

M. Malmstrom
111.05

Klienci, którzy kupili tę książkę, kupili również

Karol Szymanowski: Symphony No. 2 & No. 4/Stabat Mater

Matsuev/Smoriginas/Matthews/Gergiev/LSO & Chorus
31.27

Trastornos de la conducta alimentaria

Gabriela Velázquez Saucedo
164.94

Gudrun

Mathilde Wesendonck
79.28
50.39