Publication: Vehicle Recommendation System using Hybrid Recommender Algorithm and Natural Language Processing Approach
Type:
Article
Date
2020-12-10
Authors
Journal Title
Journal ISSN
Volume Title
Publisher
2020 2nd International Conference on Advancements in Computing (ICAC), SLIIT
Abstract
Owning a vehicle has become a mandatory requirement
in the modern world. Automobile industry investing a lot
on producing different car models to cater the needs of their
customers with different social and economic backgrounds. Thus,
Auto makers constantly produce similar car models with different
features. In Sri lanka, total number of new vehicles registered at
Sri Lanka Registry of Motor Vehicles(RMV) during the period
of seven years (from 2008 to 2015) has been increased from
265,199 to 668,907 which is nearly 2.5 times growth. This figure
shows the rapid growth of the domestic vehicle market. For a
new customer, choosing the most appropriate vehicle requires
an extra effort/time and has become a challenging task. For
example, matching personal interests and economy with number
of available options is a quite complex task. Thus, most of the
customers seek support from experts who provide consultancy
services. However, customers frequently making complains about
the existing services which offers consultancy for new vehicle
buyers. The key issues are the people involved in the consultancy
are not technically sound and pay minimal attention to customer
requirements. Their main focus is to sell the vehicle. Thus, the
customers face numerous difficulties before and after buying
their vehicle. To address this problem, this research presents
a novel vehicle recommender system which guides and gives
suggestions to the customers using machine learning technologies.
Here, we trained a neural network model using data collected
from vehicle users and vehicle sellers. Other than the neural
network model, the proposed recommendation system uses natural
language processing (NLP) to produce more personalized
recommendations. The results shows that the recommendations
made by the proposed vehicle recommendation system achieves
96% accuracy in recommending vehicles.
Description
Keywords
Vehicle Recommender systems, Collaborative Filtering, Neural network, Natural Language Processing
