Recommended System Optimization in Social Networks Based on Cooperative Filter with Deep MVR Algorithm

Today, social networks have become very popular due to their high usage in communicating with each other. But this popularity requires the development of a backend to communicate with each other. Hence, a topic called identifying users is created by making recommendations or propositional systems, a...

Full description

Saved in:
Bibliographic Details
Main Author: Kim Hung Pho
Format: Article
Language:English
Published: Bilijipub publisher 2022-12-01
Series:Advances in Engineering and Intelligence Systems
Subjects:
Online Access:https://aeis.bilijipub.com/article_163962_7ca42ca9749709697403d0ab02fe0dbe.pdf
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1823856456881930240
author Kim Hung Pho
author_facet Kim Hung Pho
author_sort Kim Hung Pho
collection DOAJ
description Today, social networks have become very popular due to their high usage in communicating with each other. But this popularity requires the development of a backend to communicate with each other. Hence, a topic called identifying users is created by making recommendations or propositional systems, and so on, link prediction. The most important issue is the new users' social networks so that they can offer suggestions. In this research, we tried to provide a system of recommendations for introducing new users to previous users and vice versa based on the principles of machine learning. The proposed method is that the data is entered into the program and then the keywords are extracted from them. Then a sampling between the data is performed based on the Pearson and Cronbach method. In the process of extraction operations along with diminishing dimensions, selection and finally extraction of the best features is done using the cooperative filter which is named here based on deep learning- Modified Vector Rotational (MVR) algorithm and its operators. In the following, due to the lack of probabilistic and statistical training in Deep and Reinforcement Learning with a random structure that is used to select users and also to offer users concerning the tastes of the extracted, there is an optimization algorithm for MVR to consider the best features with training. In the following, a series of evaluation criteria have been used to ensure the proposed approach, indicating the appropriate results of the proposed method.
format Article
id doaj-art-cc68e89e70f04abfabb073f0fa30dcab
institution Kabale University
issn 2821-0263
language English
publishDate 2022-12-01
publisher Bilijipub publisher
record_format Article
series Advances in Engineering and Intelligence Systems
spelling doaj-art-cc68e89e70f04abfabb073f0fa30dcab2025-02-12T08:46:40ZengBilijipub publisherAdvances in Engineering and Intelligence Systems2821-02632022-12-0100104414910.22034/aeis.2022.368020.1049163962Recommended System Optimization in Social Networks Based on Cooperative Filter with Deep MVR AlgorithmKim Hung Pho0Faculty of Mathematics and Statistics, Ton Duc Thang University, Ho Chi Minh City, VietnamToday, social networks have become very popular due to their high usage in communicating with each other. But this popularity requires the development of a backend to communicate with each other. Hence, a topic called identifying users is created by making recommendations or propositional systems, and so on, link prediction. The most important issue is the new users' social networks so that they can offer suggestions. In this research, we tried to provide a system of recommendations for introducing new users to previous users and vice versa based on the principles of machine learning. The proposed method is that the data is entered into the program and then the keywords are extracted from them. Then a sampling between the data is performed based on the Pearson and Cronbach method. In the process of extraction operations along with diminishing dimensions, selection and finally extraction of the best features is done using the cooperative filter which is named here based on deep learning- Modified Vector Rotational (MVR) algorithm and its operators. In the following, due to the lack of probabilistic and statistical training in Deep and Reinforcement Learning with a random structure that is used to select users and also to offer users concerning the tastes of the extracted, there is an optimization algorithm for MVR to consider the best features with training. In the following, a series of evaluation criteria have been used to ensure the proposed approach, indicating the appropriate results of the proposed method.https://aeis.bilijipub.com/article_163962_7ca42ca9749709697403d0ab02fe0dbe.pdfsocial networksuser interactionsdeep learningreinforcement learningmodified vector rotational
spellingShingle Kim Hung Pho
Recommended System Optimization in Social Networks Based on Cooperative Filter with Deep MVR Algorithm
Advances in Engineering and Intelligence Systems
social networks
user interactions
deep learning
reinforcement learning
modified vector rotational
title Recommended System Optimization in Social Networks Based on Cooperative Filter with Deep MVR Algorithm
title_full Recommended System Optimization in Social Networks Based on Cooperative Filter with Deep MVR Algorithm
title_fullStr Recommended System Optimization in Social Networks Based on Cooperative Filter with Deep MVR Algorithm
title_full_unstemmed Recommended System Optimization in Social Networks Based on Cooperative Filter with Deep MVR Algorithm
title_short Recommended System Optimization in Social Networks Based on Cooperative Filter with Deep MVR Algorithm
title_sort recommended system optimization in social networks based on cooperative filter with deep mvr algorithm
topic social networks
user interactions
deep learning
reinforcement learning
modified vector rotational
url https://aeis.bilijipub.com/article_163962_7ca42ca9749709697403d0ab02fe0dbe.pdf
work_keys_str_mv AT kimhungpho recommendedsystemoptimizationinsocialnetworksbasedoncooperativefilterwithdeepmvralgorithm