Recommender agents will personalise the shopping experience of e-commerce users. In addition, the same technology can be used to support experimentation so that companies can implement systematic market learning methodologies. This paper presents a comparison regarding the relative predictive performance of Backpropagation neural networks, Fuzzy ARTMAP neural networks and Support Vector Machines in implementing recommendation systems based on individual models for electronic commerce. The results show that support vector machines perform better when the training data set is very limited in size. However, supervised neural networks based on minimising errors (i.e., Backpropagation) are able to provide good answers when the training data sets...
Recommender Systems are information filtering engines used to estimate user preferences on items they...
Recommendation systems are algorithms that aim to predict what items are preferred by a user, based ...
In recent years, especially with the (COVID-19) pandemic, shopping has been a challenging task. Incr...
Software agents can change the nature of interactions on the Internet: from simple access to large d...
Recommender systems are now widely used in e-commerce applications to assist customers to find relev...
Now a day’s recommendation systems are becoming more popular to recommend products for the individua...
Accuracy improvement is among the primary key research focuses in the area of recommender systems. T...
Accuracy improvement is among the primary key research focuses in the area of recommender systems. T...
Abstract- A real world challenging task of an e-commerce application is to identify the needs of the...
Recommender systems are widely used in e-commerce websites to improve the buying experience of the c...
Today, recommendation algorithms are widely used by companies in multiple sectors with the aim of in...
Recently, recommender systems have been developed for a variety of domains. Recommender systems also...
Recently, recommender systems have been developed for a variety of domains. Recommender systems also...
Recently, recommender systems have been developed for a variety of domains. Recommender systems also...
Various practitioners in building recommendation systems currently leverage deep learn- ing techniqu...
Recommender Systems are information filtering engines used to estimate user preferences on items they...
Recommendation systems are algorithms that aim to predict what items are preferred by a user, based ...
In recent years, especially with the (COVID-19) pandemic, shopping has been a challenging task. Incr...
Software agents can change the nature of interactions on the Internet: from simple access to large d...
Recommender systems are now widely used in e-commerce applications to assist customers to find relev...
Now a day’s recommendation systems are becoming more popular to recommend products for the individua...
Accuracy improvement is among the primary key research focuses in the area of recommender systems. T...
Accuracy improvement is among the primary key research focuses in the area of recommender systems. T...
Abstract- A real world challenging task of an e-commerce application is to identify the needs of the...
Recommender systems are widely used in e-commerce websites to improve the buying experience of the c...
Today, recommendation algorithms are widely used by companies in multiple sectors with the aim of in...
Recently, recommender systems have been developed for a variety of domains. Recommender systems also...
Recently, recommender systems have been developed for a variety of domains. Recommender systems also...
Recently, recommender systems have been developed for a variety of domains. Recommender systems also...
Various practitioners in building recommendation systems currently leverage deep learn- ing techniqu...
Recommender Systems are information filtering engines used to estimate user preferences on items they...
Recommendation systems are algorithms that aim to predict what items are preferred by a user, based ...
In recent years, especially with the (COVID-19) pandemic, shopping has been a challenging task. Incr...