TY - JOUR
T1 - A review of a recommendation filtering system approach based on reliable sustainable opinion mining
AU - Gmach, Imen
AU - Abaoub, Nadia
AU - Khan, Rubina
AU - Mahfoudh, Naoufel
AU - Kaddour, Amira
N1 - Publisher Copyright:
© 2021, Emerald Publishing Limited.
PY - 2022/9/19
Y1 - 2022/9/19
N2 - Purpose: In this article the authors will focus on the state of the art on information filtering and recommender systems based on trust. Then the authors will represent a variety of filtering and recommendation techniques studied in different literature, like basic content filtering, collaborative filtering and hybrid filtering. The authors will also examine different trust-based recommendation algorithms. It will ends with a summary of the different existing approaches and it develops the link between trust, sustainability and recommender systems. Design/methodology/approach: Methodology of this study will begin with a general introduction to the different approaches of recommendation systems; then define trust and its relationship with recommender systems. At the end the authors will present their approach to “trust-based recommendation systems”. Findings: The purpose of this study is to understand how groups of users could improve trust in a recommendation system. The authors will examine how to evaluate the performance of recommender systems to ensure their ability to meet the needs that led to its creation and to make the system sustainable with respect to the information. The authors know very well that selecting a measure must depend on the type of data to be processed and user interests. Since the recommendation domain is derived from information search paradigms, it is obvious to use the evaluation measures of information systems. Originality/value: The authors presented a list of recommendations systems. They examined and compared several recommendation approaches. The authors then analyzed the dominance of collaborative filtering in the field and the emergence of Recommender Systems in social web. Then the authors presented and analyzed different trust algorithms. Finally, their proposal was to measure the impact of trust in recommendation systems.
AB - Purpose: In this article the authors will focus on the state of the art on information filtering and recommender systems based on trust. Then the authors will represent a variety of filtering and recommendation techniques studied in different literature, like basic content filtering, collaborative filtering and hybrid filtering. The authors will also examine different trust-based recommendation algorithms. It will ends with a summary of the different existing approaches and it develops the link between trust, sustainability and recommender systems. Design/methodology/approach: Methodology of this study will begin with a general introduction to the different approaches of recommendation systems; then define trust and its relationship with recommender systems. At the end the authors will present their approach to “trust-based recommendation systems”. Findings: The purpose of this study is to understand how groups of users could improve trust in a recommendation system. The authors will examine how to evaluate the performance of recommender systems to ensure their ability to meet the needs that led to its creation and to make the system sustainable with respect to the information. The authors know very well that selecting a measure must depend on the type of data to be processed and user interests. Since the recommendation domain is derived from information search paradigms, it is obvious to use the evaluation measures of information systems. Originality/value: The authors presented a list of recommendations systems. They examined and compared several recommendation approaches. The authors then analyzed the dominance of collaborative filtering in the field and the emergence of Recommender Systems in social web. Then the authors presented and analyzed different trust algorithms. Finally, their proposal was to measure the impact of trust in recommendation systems.
KW - Collaborative filtering
KW - Confidence algorithms
KW - Filtering approaches
KW - Information search
KW - Sustainability
KW - Systems of recommendations
KW - Trust
UR - https://www.scopus.com/pages/publications/85189986539
U2 - 10.1108/TECHS-09-2021-0012
DO - 10.1108/TECHS-09-2021-0012
M3 - Article
AN - SCOPUS:85189986539
SN - 2754-1312
VL - 1
SP - 184
EP - 200
JO - Technological Sustainability
JF - Technological Sustainability
IS - 2
ER -