Title :
A Light-Weight Visualization Tool for Support Vector Machines
Author_Institution :
Integrated Sci. & Technol., Marshall Univ., Huntington, WV, USA
Abstract :
The family of Support Vector Machines (SVM) is one of the most popular supervised learning algorithms today. It is renowned for its outstanding performance and accuracy in many different application domains. In this paper, we present a visualization tool to enhance the utility of SVM. It provides access to the distance measure of each data point to the optimal hyperplane. It also provides the distribution of distance values in the feature space. %The tool also provides the interactive features of panning, zooming and picking, which are useful in inspecting misclassified data points. The tool also incorporates capabilities for panning, zooming, and picking. These interactive features are useful for inspecting misclassified data points to improve the performance of SVM. The tool was used in a cancer detection project using FT-IR spectra. Visualization of the spectra led to the detection and removal of noisy spectra.
Keywords :
Fourier transform spectra; cancer; data visualisation; infrared spectra; interactive systems; learning (artificial intelligence); medical computing; signal denoising; support vector machines; FTIR spectra; SVM; cancer detection project; distance measure; distance values distribution; feature space; interactive features; light-weight visualization tool; misclassified data point inspection; noisy spectra detection; noisy spectra removal; optimal hyperplane; panning; picking; spectra visualization; supervised learning algorithms; support vector machines; zooming; Accuracy; Data visualization; Histograms; Noise measurement; Shape; Support vector machines; Visualization; Support Vector Machines; interactive visualization; visualization;
Conference_Titel :
Database and Expert Systems Applications (DEXA), 2014 25th International Workshop on
Conference_Location :
Munich
Print_ISBN :
978-1-4799-5721-7
DOI :
10.1109/DEXA.2014.34