Collaborative Filtering-based Electricity Plan Recommender System
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Collaborative Filtering-based Electricity Plan Recommender System
1. Collaborative Filtering-based Electricity Plan Recommender
System
ABSTRACT:
Owning to electricity market deregulation, residential customers now enjoy the
freedom to choose their preferred electricity retailers. This paper investigates the
application of recommender system, a fast-developing technique in machine
learning, into the task of recommending electricity plans for the individual
residential customer. Based on a collaborative filtering strategy, an electricity plan
recommender system (EPRS) is developed. By providing easily obtainable data of
some household appliances, residential customers of the EPRS are recommended
with predicted ratings of different plans, which can provide effective guidance to
customers in the selection of suitable plans and proper tariffs. Different numerical
tests are carried out to evalu-ate the performance of the EPRS. The EPRS
outperforms other strategies in the accuracy of recommendation result and is
verified to be a promising solution to electricity plan recommendation task.
SYSTEM REQUIREMENTS:
HARDWARE REQUIREMENTS:
System : Pentium Dual Core.
Hard Disk : 120 GB.
Monitor : 15’’ LED
Input Devices : Keyboard, Mouse
Ram : 1 GB
2. SOFTWARE REQUIREMENTS:
Operating system : Windows 7.
Coding Language : Python
Database : MYSQL
REFERENCE:
Yuan Zhang, Student Member, IEEE, Ke Meng, Member, IEEE, Weicong Kong,
Member, IEEE and Zhao Yang Dong, Fellow, IEEE, “Collaborative Filtering-
based Electricity Plan Recommender System”, IEEE Transactions on Industrial
Informatics, 2019.