Learning form continuous financial systems play a vital role in enterprise operations. One of the most sophisticated non-parametric supervised learning classifiers, SVM (Support Vector Machines), provides robust and accurate results, however it may require intense computation and other resources. The heart of SLT (Statistical Learning Theory), SRM (Structural Risk Minimization )Principle can also be used for model selection. In this paper, we focus on comparing the performance of model estimation using SRM with SVR (Support Vector Regression) for forecasting the retail sales of consumer products. The potential benefits of an accurate sales forecasting technique in businesses are immense. Retail sales forecasting is an integral part of strat...
Forecasting procedures have found applications in a wide variety of areas within finance and have fu...
Forecasting procedures have found applications in a wide variety of areas within finance and have fu...
This study aims at identifying an optimal set of features for predicting firms bankruptcy events in ...
Many marketing problems require accurately predicting the outcome of a process or the future state o...
This report depicts the work done by me, Abburu Manasa, as a contribution towards my Final Year Proj...
This report depicts the work done by me, Abburu Manasa, as a contribution towards my Final Year Proj...
This thesis deals with use of regression or classification based on support vector machines from mac...
Previous research shows strong evidence that traditional regression based predictive models face sig...
The stocks market is one of the widely traded financial instruments. During the recent economic cris...
The stocks market is one of the widely traded financial instruments. During the recent economic cris...
In view of the low generalization capacity of standard support vector machine for some types of nois...
Prediction of the trend of the stock market is very crucial. If someone has robust forecasting tools...
Forecasting procedures have found applications in a wide variety of areas within finance and have fu...
Forecasting procedures have found applications in a wide variety of areas within finance and have fu...
Forecasting procedures have found applications in a wide variety of areas within finance and have fu...
Forecasting procedures have found applications in a wide variety of areas within finance and have fu...
Forecasting procedures have found applications in a wide variety of areas within finance and have fu...
This study aims at identifying an optimal set of features for predicting firms bankruptcy events in ...
Many marketing problems require accurately predicting the outcome of a process or the future state o...
This report depicts the work done by me, Abburu Manasa, as a contribution towards my Final Year Proj...
This report depicts the work done by me, Abburu Manasa, as a contribution towards my Final Year Proj...
This thesis deals with use of regression or classification based on support vector machines from mac...
Previous research shows strong evidence that traditional regression based predictive models face sig...
The stocks market is one of the widely traded financial instruments. During the recent economic cris...
The stocks market is one of the widely traded financial instruments. During the recent economic cris...
In view of the low generalization capacity of standard support vector machine for some types of nois...
Prediction of the trend of the stock market is very crucial. If someone has robust forecasting tools...
Forecasting procedures have found applications in a wide variety of areas within finance and have fu...
Forecasting procedures have found applications in a wide variety of areas within finance and have fu...
Forecasting procedures have found applications in a wide variety of areas within finance and have fu...
Forecasting procedures have found applications in a wide variety of areas within finance and have fu...
Forecasting procedures have found applications in a wide variety of areas within finance and have fu...
This study aims at identifying an optimal set of features for predicting firms bankruptcy events in ...