AbstractAdvances in information technologies have changed our lives in many ways. There is a trend that people look for news and stories on the internet. Under this circumstance, it is more urgent for traditional media companies to predict print's (i.e. newspapers/magazines) sales than ever. Previous approaches in newspapers/magazines’ sales forecasting are mainly focused on building regression models based on sample data sets. But such regression models can suffer from the over-fitting problem. Recent theoretical studies in statistics proposed a novel method, namely support vector regression (SVR), to overcome the over-fitting problem. In contrast to traditional regression model, the objective of SVR is to achieve the minimum structural ri...
Many marketing problems require accurately predicting the outcome of a process or the future state o...
We propose to estimate the parameters of the Market Share Attraction Model (Cooper & Nakanishi, 1988...
The aim of this study to examine the performance of Support Vector Regression (SVR) which is a novel...
The study aims to find an appropriate model to extract insights from the sales of a Pharmaceutical D...
Prediction of the trend of the stock market is very crucial. If someone has robust forecasting tools...
This report depicts the work done by me, Abburu Manasa, as a contribution towards my Final Year Proj...
In this work, 132,229 articles from a Swedish news publisher are used to explore news article popula...
Learning form continuous financial systems play a vital role in enterprise operations. One of the mo...
Finding the optimum quantity of the circulation of magazines is a difficult task due to the effects ...
Machine learning methods are successfully used in text classification. The usage of support vector ...
which permits unrestricted use, distribution, and reproduction in any medium, provided the original ...
AbstractIntroducing the basic theory and computing process of time series forecasting based on Suppo...
Today, many magazine publishing houses faces the problem of future predictions of their products. In...
AbstractIn this study, a clustering-based sales forecasting scheme based on support vector regressio...
International audienceIn this article, the quantity of grapes sold in one fruit shop of an ...
Many marketing problems require accurately predicting the outcome of a process or the future state o...
We propose to estimate the parameters of the Market Share Attraction Model (Cooper & Nakanishi, 1988...
The aim of this study to examine the performance of Support Vector Regression (SVR) which is a novel...
The study aims to find an appropriate model to extract insights from the sales of a Pharmaceutical D...
Prediction of the trend of the stock market is very crucial. If someone has robust forecasting tools...
This report depicts the work done by me, Abburu Manasa, as a contribution towards my Final Year Proj...
In this work, 132,229 articles from a Swedish news publisher are used to explore news article popula...
Learning form continuous financial systems play a vital role in enterprise operations. One of the mo...
Finding the optimum quantity of the circulation of magazines is a difficult task due to the effects ...
Machine learning methods are successfully used in text classification. The usage of support vector ...
which permits unrestricted use, distribution, and reproduction in any medium, provided the original ...
AbstractIntroducing the basic theory and computing process of time series forecasting based on Suppo...
Today, many magazine publishing houses faces the problem of future predictions of their products. In...
AbstractIn this study, a clustering-based sales forecasting scheme based on support vector regressio...
International audienceIn this article, the quantity of grapes sold in one fruit shop of an ...
Many marketing problems require accurately predicting the outcome of a process or the future state o...
We propose to estimate the parameters of the Market Share Attraction Model (Cooper & Nakanishi, 1988...
The aim of this study to examine the performance of Support Vector Regression (SVR) which is a novel...