PERSONALISED RECOMMENDER ENGINE USING A PROBABLISTIC MODEL

Abstract

The world of e-commerce and e-business has opened many horizons to explore customers on web. Consumers are expecting businesses to approach and please them with their expectations. This has given rise to recommender systems. Many of the recommender systems are generalized in nature which are often based on market stratum and user predictions. However, extensive research is being carried out in providing personalized recommendations using association rules, customer segmentation, social media ontologies and demographics. There are many issues in the implementation of these systems. This paper discusses diverse recommender approaches proposed in the past with a comparative study and gap analysis. It also proposes a Hybrid Personalized Recommender system by using a probabilistic model.

Authors and Affiliations

AJAY RAJENDRA DHRUV AND J W BAKAL

Keywords

Related Articles

A HYBRIDIZATION OF ARTIFICIAL NEURAL NETWORK AND SUPPORT VECTOR MACHINE FOR PREVENTION OF ROAD ACCIDENTS IN VANET

Vehicular Ad hoc Network (VANET) is known as an infrastructure less network having dynamic nodes with Road Side Units (RSUs). Data Broadcasting becomes a very difficult task because of more density, scalability, random...

A ROBUST ORGANIZATIONAL POLICY FOR TASK AND RESOURCE ALLOCATION: A NOVEL FRAMEWORK

In a Multi-Agent System existing formalisms for implementing organizational policies assign specific roles to each agent. Examples are hierarchical organization, contract net protocol, social reasoning mechanism, and t...

FAULT DATA DETECTION IN SOFTWARE USING A NOVEL FGRNN ALGORITHM

The use and dependence on software in various fields has been the reason why researchers for past decades have spent their efforts on finding better methods to predict software quality and reliability. Soft computing m...

BREAST CANCER DETECTION USING ANN NETWORK AND PERFORMANCE ANALYSIS WITH SVM

According to the World Health Organization (WHO) breast cancer is the major reason of death among women and its impact on women is 2.1 million per year. Only in 2018 approximately 15% (62700) of women are died due to b...

IMPLEMENTATION OF STABLE PRIVATE CLOUD USING OPENSTACK WITH VIRTUAL MACHINE RESULTS

In today’s era educational organization strongly needs devices which are ready to access and use and also various operating system platforms are required for different learning courses. To achieve this type of environm...

Download PDF file
  • EP ID EP46532
  • DOI 10.34218/IJCET.10.2.2019.005
  • Views 178
  • Downloads 0

How To Cite

AJAY RAJENDRA DHRUV AND J W BAKAL (2019). PERSONALISED RECOMMENDER ENGINE USING A PROBABLISTIC MODEL. International Journal of Computer Engineering & Technology (IJCET), 10(2), -. https://europub.co.uk/articles/-A-46532