Open Access Journal

ISSN : 2394-2320 (Online)

International Journal of Engineering Research in Computer Science and Engineering (IJERCSE)

Monthly Journal for Computer Science and Engineering

Open Access Journal

International Journal of Engineering Research in Computer Science and Engineering (IJERCSE)

Monthly Journal for Computer Science and Engineering

ISSN : 2394-2320 (Online)

Real Estate Recommendation using Hybrid Recommendation Algorithms

Author : Mr. Pratik Kamble 1 Sachin Bavdhankar 2 Akash Patil 3 Amey Joshi 4 Anushka Nalawade 5 Milind Deshpande 6

Date of Publication :12th August 2021

Abstract: Increased digitalization has influenced real estate sector dramatically. Internet has enabled us to search, rent and buy property online. But there is hard to find the suitable property to purchase as purchasing property include lot of factor like finance, location, accessibility , etc. User purchase preferences, their likes and dislikes are a very tricky task even for humans. Many website are available for real estate but they just have standard filter feature to filter out the available property they cannot understand the full user requirement. The main help of our system to recommend suitable home to user based on user financial condition, sentiment, family, locality etc. Your system uses the sentiment analysis and considers the various factor of the property and recommend most suitable property match. First our system takes the user input which includes user details, financial condition, etc. The system also performs the sentiment analysis using various algorithms like fast Text. After the sentiment analysis user classification is done and lastly personalized recommendation is done. The input to system is the user data and the output of the system is the best home recommendation to user based on user preference. Your system also include to home price predication which will help user to buy home. Ultimate aim of the system is to recommend the best possible home to the user which perfectly matches the various requirement of the user. Currently the content based recommendation and collaborative recommendation are used in recommendation system. We are using the hybrid recommendation algorithm which combines the content based recommendation and collaborative filtering. First we are going to apply the collaborative filtering and the output of collaborative filtering will be taken as input to content based recommendation model. Hybrid recommendation algorithm will increase the accuracy of recommendation system.

Reference :

    1. BABAK MALEKI SHOJA1, AND NASSEH TABRIZI,“Customer Reviews Analysis with Deep Neural Networks for E-Commerce Recommender Systems”, IEEE Access 2019.
    2. Zhen Hua Huang1, Chang Yu2, Juan Ni3, Hai Liu, ” An Efficient Hybrid Recommendation Model with Deep Neural Networks ”, IEEE Access 2018.
    3. Wenjun Liu ,“Community Education Course Recommendation Based on Intelligent Recommendation Algorithm”, SpringerConference, 31/07/2019
    4. Shigang Hu ,Akshi Kumar ,Fadi Al Turjman ,Shivam Gupta,Simran Seth,”Reviewer Credibility and Sentiment Analysis Based User Profile Modelling for Online Product Recommendation”,IEEE ACCESS,19/01/2020.
    5. Shu nan Ma,” Web Information Recommendation Evaluation Model Based on Multifactor Decision Making”, IEEE International Conference 12/08/2019.
    6. Rung-Ching Chen ,Hendry,” User Rating Classification via Deep Belief Network Learning and Sentiment Analysis”, IEEE Transactions 31/05/2019.
    7. Wenjun Liu,”Community Education Course Recommendation Based on Intelligent Recommendation Algorithm”, Springer Conference 31/07/2019.

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