XGBoost. The Extreme Gradient Boosting for Mining Applications

18,99 €*

Nach dem Kauf zum Download bereit Ein Downloadlink ist wenige Minuten nach dem Kauf im eigenen Benutzerprofil verfügbar.

ISBN/EAN: 9783668660601
Technical Report from the year 2017 in the subject Computer Science - Internet, New Technologies, grade: 8, , language: English, abstract: Tree boosting has empirically proven to be a highly effective and versatile approach for data-driven modelling. The core argument is that tree boosting can adaptively determine the local neighbourhoods of the model thereby taking the bias-variance trade-off into consideration during model fitting. Recently, a tree boosting method known as XGBoost has gained popularity by providing higher accuracy. XGBoost further introduces some improvements which allow it to deal with the bias-variance trade-off even more carefully. In this research work, we propose to demonstrate the use of an adaptive procedure i.e. Learned Loss (LL) to update the loss function as the boosting proceeds. Accuracy of the proposed algorithm i.e. XGBoost with Learned Loss boosting function is evaluated using test/train method, K-fold cross validation, and Stratified cross validation method and compared with the state of the art algorithms viz. XGBoost, AdaBoost, AdaBoost-NN, Linear Regression(LR),Neural Network(NN), Decision Tree(DT), Support Vector Machine(SVM), bagging-DT, bagging-NN and Random Forest algorithms. The parameters evaluated are accuracy, Type 1 error and Type 2 error (in Percentages). This study uses total ten years of historical data from Jan 2007 to Aug 2017 of two stock market indices CNX Nifty and S&P BSE Sensex which are highly voluminous. Further, in this research work, we will investigate how XGBoost differs from the more traditional ensemble techniques. Moreover, we will discuss the regularization techniques that these methods offer and the effect these have on the models. In addition to this, we will attempt to answer the question of why XGBoost seems to win so many competitions. To do this, we will provide some arguments for why tree boosting, and in particular XGBoost, seems to be such a highly effective and versatile approach to predictive modelling. The core argument is that tree boosting can be seen to adaptively determine the local neighbourhoods of the model. Tree boosting can thus be seen to take the bias-variance trade off into consideration during model fitting. XGBoost further introduces some improvements which allow it to deal with the bias-variance trade off even more carefully.
Autor: Nonita Sharma
EAN: 9783668660601
eBook Format: PDF
Sprache: Englisch
Produktart: eBook
Veröffentlichungsdatum: 13.03.2018
Kategorie:
Schlagworte: applications boosting extreme gradient mining xgboost

0 von 0 Bewertungen

Geben Sie eine Bewertung ab!

Teilen Sie Ihre Erfahrungen mit dem Produkt mit anderen Kunden.


shop display image

Möchten Sie lieber vor Ort einkaufen?

Haben Sie weiterführende Fragen zu diesem Buch oder anderen Produkten? Oder möchten Sie einfach doch lieber in der Buchhandlung stöbern? Wir sind gern persönlich für Sie da und beraten Sie auch telefonisch.

Bergische Buchhandlung R. Schmitz
Wetterauer Str. 6
42897 Remscheid-Lennep
Telefon: 02191/668255

Mo – Fr10:00 – 18:00 UhrSa09:00 – 13:00 Uhr