A Systematic Literature Review of Food Recommender Systems
The enormous variations in food choices and lifestyle in today’s world have given rise to the demand of using recommender system as a suitable tool in making appropriate food choices. Need for choosing nutritious food items is becoming important in today’s modern lifestyle as people are getting indulged in eating unhealthy food and thus leading to miserable health status. Many lifestyle-related diseases, such as diabetes and obesity, can also be reversed by proper diet. Filtering techniques in recommender system use a dataset of items and user’s preferences as input to discover a list of well-judged items as suggestions. In light of the above said, this paper presents an exploratory study of the recommendation approaches and methods utilized for food and recipe recommendations in the past decade. For this purpose, several relevant papers published in the food domain from 2006 to 2023 have been extensively studied. Further, the research articles are categorized based on the filtering techniques, methods, functionalities and data sources used by the researchers. A comparative study of the recommendation approaches revealed the advantages and disadvantages of different approaches. Also, the paper emphasizes the importance of food recommendation techniques in health and nutrition management of an individual. The review highlights the need to further explore the implementation of recommender systems in the food industry. Furthermore, the findings of this survey provide researchers with insights and future directions on recommender systems in the domain.
This is a preview of subscription content, log in via an institution to check access.
Access this article
Subscribe and save
Springer+ Basic
€32.70 /Month
- Get 10 units per month
- Download Article/Chapter or eBook
- 1 Unit = 1 Article or 1 Chapter
- Cancel anytime
Buy Now
Price includes VAT (France)
Instant access to the full article PDF.
Rent this article via DeepDyve
Similar content being viewed by others
Personalized Food Recommendation—State of Art and Review
Chapter © 2022
An overview of recommender systems in the healthy food domain
Article Open access 22 June 2017
Recommendation of Food Items for Thyroid Patients Using Content-Based KNN Method
Chapter © 2021
Explore related subjects
References
- Felfernig A, Burke R. Constraint-based recommender systems: technologies and research issues. In: 10th international conference on electronic commerce (ICEC ’08). New York: ACM; 2008. p. 1–8. Google Scholar
- Verbert K, Duval E, Lindstaedt SN, Gillet D. Context-aware recommender systems. J Univ Comput Sci. 2010;16(16):2175–8. Google Scholar
- Freyne J, Berkovsky S. Intelligent food planning: personalized recipe recommendation. In: 15th international conference on Intelligent user interfaces (IUI ’10). New York: ACM; 2010. p. 321–4. Google Scholar
- Ornish D, et al. Can lifestyle changes reverse coronary heart disease? The lifestyle heart trial. Lancet. 1990;336:129–33. ArticleGoogle Scholar
- Brunner E, Stallone D, Juneja M, Bingham S, Marmot M. Dietary assessment in white hall II: comparison of 7 d diet diary and food-frequency questionnaire and validity against biomarkers. Br J Nutr. 2001;86:405–14. ArticleGoogle Scholar
- Guthrie JF, Derby BM, Levy AS. America's eating habits: changes and consequences agriculture information. US Dept. for Agriculture. Bulletin No. AIB750. 243–280, 1999.
- Harvey M, Ludwig B, Elsweiler D. You are what you eat: learning user tastes for rating prediction. In: Kurland O, Lewenstein M, Porat E, editors. String Processing and information retrieval, LNCS. 8214th ed. Cham: Springer; 2013. Google Scholar
- Said A, Bellogin A. You are what you eat! tracking health through recipe interactions. In: 6th Workshop on recommender systems and the social web (RSWeb’ 14). Foster City: ACM; 2014. Google Scholar
- Trattner C, Elsweiler D. Food recommender systems: important contributions, challenges and future research directions. 2017. arXiv:1711.02760.
- Kumar A, Tanwar P, Nigam S. Survey and evaluation of food recommendation systems and techniques. In: 3rd International Conference on Computing for Sustainable Global Development (INDIACom’16), IEEE, New Delhi, 2016, pp. 3592–6.
- Anderson C. A Survey on Food Recommenders. 2018. arXiv:1809.02862.
- Kitchenham BA, Charters S. Guidelines for performing systematic literature reviews in software engineering. Technical report, EBSE, 2007.
- Bobadilla J, et al. Recommender systems survey. Knowl Based Syst. 2013;46:109–32. ArticleGoogle Scholar
- Ansari A, Essegaier S, Kohli R. Internet recommendation systems. J Mark Res. 2000;37:363–75. ArticleGoogle Scholar
- Pazzani M, Billsus D. Content-based recommendation systems. In: Brusilovsky P, Kobsa A, Nejdl W, editors. The adaptive web 2007, LNCS. 4321st ed. Heidelberg: Springer; 2007. p. 325–41. Google Scholar
- Schafer JB, et al. Collaborative filtering recommender systems. In: Brusilovsky P, Kobsa A, Nejdl W, editors., et al., The adaptive web 2007, LNCS. 4321st ed. Berlin: Springer-Verlag; 2007. p. 291–324. Google Scholar
- Amatriain X, Jaimes A, Oliver N, Pujol J. Data mining methods for recommender systems. In: Ricci F, Rokach L, Shapira B, Kantor PB, editors. Recommender systems handbook 2011. Boston: Springer; 2011. p. 39–71. ChapterGoogle Scholar
- Trewin S. Knowledge-based recommender systems. Encycl Libr Inf Sci. 2000;69:180. Google Scholar
- Burke R. Hybrid recommender systems: survey and experiments. User Model User-Adap Inter. 2002;12:331–70. ArticleGoogle Scholar
- Adomavicius G, Tuzhilin A. Context-aware recommender systems. In: Ricci F, Rokach L, Shapira B, Kantor P, editors. Recommender systems handbook 2011. Boston: Springer; 2011. p. 217–53. ChapterGoogle Scholar
- Middleton S, Roure D, Shadbolt N. Ontology-based recommender system. In: Staab S, Studer R, editors. Handbook on ontologies 2009. Berlin: Springer; 2009. p. 779–96. ChapterGoogle Scholar
- Huang Z, Chung W, Ong TH, Chen H. A graph-based recommender system for digital library. In: Ch M, editor. 2nd ACM/IEEE-CS joint conference on Digital libraries (JCDL ’02). New York: ACM; 2002. p. 65–73. ChapterGoogle Scholar
- Lops P, Gemmis MD, Semeraro G. Content-based recommender systems: State of the art and trends. In: Ricci F, Rokach L, Shapira B, Kantor P, editors. Recommender systems handbook 2011. Cham: Springer; 2011. p. 73–105. ChapterGoogle Scholar
- Adomavicius G, Jannach D. Preface to the special issue on context-aware recommender systems. User Model User-Adap Inter. 2013;24:1–5. ArticleGoogle Scholar
- Stapic Z, Lopez EG, Cabot AG, Ortega LM, Strahonja V. Performing systematic literature review in software engineering. In: 23rd international conference of Central European Conference on Information and Intelligent Systems (CECIIS’ 12), 2012, pp. 441-447
- Khandagale S, et al. Food recommendation system using sequential pattern mining. Imp J Interdiscip Res. 2016;2:912–5. Google Scholar
- Sobecki J, Babiak E, Słanina M. Application of hybrid recommendation in web-based cooking assistant. In: Gabrys B, Howlett RJ, Jain LC, editors. Knowledge-Based Intelligent information and engineering systems 2006, LNCS. 4253rd ed. Heidelberg: Springer; 2006. p. 797–804. Google Scholar
- Maneerat N, Varakulsiripunth R, Fudholi D. Ontology-based nutrition planning assistance system for health control. J Asean Eng. 2013;1:28–41. Google Scholar
- Lin CJ, Kuo TT, Lin SD. A content-based matrix factorization model for recipe recommendation. In: Tseng VS, Huo TB, Zhou ZH, Chen ALP, Kao HY, editors. Advances in knowledge discovery and data mining 2014, LNCS. 8444th ed. Cham: Springer; 2014. p. 560–71. ChapterGoogle Scholar
- Mouzhi G, Mehdi E, Ignacio FT, Francesco R, David M. Using tags and latent factors in a food recommender system. In: 5th international conference on digital health 2015 (DH ’15). New York: ACM; 2015. p. 105–12. Google Scholar
- Dimitris N, Efthimios B, Konstantinos P, Babis M, Gregoris M. DISYS: an intelligent system for personalized nutritional recommendations in restaurants. In: 19th panhellenic conference on informatics (PCI ’15). New York: ACM; 2015. p. 382–7. Google Scholar
- Cheng TL, Yusof UK, Khalid MNA. Content-based filtering algorithm for mobile recipe application. In: 8th Conference of Malaysian Software Engineering (MySEC’ 14). IEEE, Langkawi, Malaysia, 2014, pp. 183–188.
- Ueta T, Iwakami M, Ito T. Implementation of a goal-oriented recipe recommendation system providing nutrition information. In: International Conference on Technologies and Applications of Artificial Intelligence (TAAI’ 11). IEEE, Chung-Li, Taiwan, 2011, pp. 183–8.
- Abdool H, Pooransingh A, Li Y. Recommend my dish: a multi-sensory food recommender. In: IEEE Pacific Rim Conference on Communications, Computers and Signal Processing (PACRIM’ 15). IEEE, Victoria, BC, Canada, 2015, pp. 240–5.
- Elsweiler D, Harvey M. Towards automatic meal plan recommendations for balanced nutrition. In: Ch M, editor. 9th ACM conference on recommender systems (RecSys ’15). New York: ACM; 2015. p. 313–6. Google Scholar
- Mouzhi G, Ricci F, Massimo D. Health-aware food recommender system. In: 9th ACM conference on recommender systems (RecSys ’15). New York: ACM; 2015. p. 333–4. Google Scholar
- Phanich M, Pholkul P, Phimoltares P. Food recommendation system using clustering analysis for diabetic patients. In: 2010 International Conference on Information Science and Applications (ICSA’ 10). IEEE, Seoul, South Korea, 2010, pp. 1–8.
- Ueda M, Morishita Y, Nakamura T, Takata N, Nakajima S. A recipe recommendation system that considers user’s mood. In: 18th international conference on information integration and web-based applications and services (iiWAS ’16). New York: ACM; 2016. p. 472–6. Google Scholar
- Mino Y, Kobayashi I. Recipe recommendation for a diet considering a user's schedule and the balance of nourishment. In: IEEE International Conference on Intelligent Computing and Intelligent Systems (ICIS’ 09). IEEE, Shanghai, China, 2009, pp. 383–7.
- Maruyama T, Kawano Y, Yanai K. Real-time mobile recipe recommendation system using food ingredient recognition. In: 2nd ACM international workshop on interactive multimedia on mobile and portable devices (IMMPD ’12). New York: ACM; 2012. p. 27–34. Google Scholar
- Ueda M, Nakajima S. Recipe recommendation method by considering user’s preference and ingredient quantity of target recipe. In: Yang GC, Huang X, Castillo O, editors. Transactions on engineering technologies. Dordrecht: Springer; 2015. p. 385–95. ChapterGoogle Scholar
- Nezis A, Papageorgiou H, Georgiadis P, Jiskra P, Pappas D, Pontiki M. Towards a fully personalized food recommendation tool. In: International conference on advanced visual interfaces (AVI ’18). New York: ACM; 2018. p. 3. Google Scholar
- Ribeiro D, Ribeiro J, Vasconcelos MJM, Vieira EF, Barros AC. SousChef: improved meal recommender system for portuguese older adults. In: Röcker C, Donoghue J, Ziefle M, Maciaszek L, Molloy W, editors. Information and communication technologies for ageing well and e-health ICT4AWE’17. Communications in computer and information science. 869th ed. Cham: Springer; 2018. p. 107–26. Google Scholar
- Ng YK, Jin M. Personalized recipe recommendations for toddlers based on nutrient intake and food preferences. In: Ch M, editor. International conference on management of digital ecosystems (MEDES ’17). New York: ACM; 2017. p. 243–50. ChapterGoogle Scholar
- Teng C, Lin Y, Adamic LA. Recipe recommendation using ingredient networks. In: 4th annual ACM conference on web science (WebSci11). New York: ACM; 2011. p. 298–307. Google Scholar
- Kim J. iRIS: a large-scale food and recipe recommendation system using spark. Data Science and Engineering at Scale, 2015.
- Kadowaki T, Yamakata Y, Tanaka K. Situation-based food recommendation for yielding good results. In: IEEE International Conference on Multimedia and Expo Workshops (ICMEW’ 15). IEEE, Turin, Italy, 2015, pp. 1–6.
- Bundasak S, Chinnasarn K. Dimensionality reduction on slope one predictor in the food recommender system. In: 2013 International Computer Science and Engineering Conference (ICSEC’ 13). IEEE, NakornPathom, Thailand, 2013, pp. 84–9.
- Yang L, Hsieh CK, Yang H, Pollak JP, Dell N, Belongie S, Cole C, Estrin D. Yum-Me: a personalized nutrient-based meal recommender system. ACM Trans Inf Syst. 2017;36:31. Google Scholar
- Agapito G, Calabrese B, Guzzi PH et al. DIETOS: A recommender system for adaptive diet monitoring and personalized food suggestion. In: IEEE 12th International Conference on Wireless and Mobile Computing, Networking and Communications (WiMob’ 16). IEEE, New York, 2016, pp. 1–8.
- Mao X, Yuan S, Xu W, Wei D. Recipe recommendation considering the flavour of regional cuisines. In: International Conference on Progress in Informatics and Computing (PIC’ 16). IEEE, Shanghai, China, 2016, pp. 32–6.
- Forbes P, Zhu M. Content-boosted matrix factorization for recommender systems experiments with recipe recommendation. In: 5th ACM conference on recommender systems (RecSys’ 11). New York: ACM; 2011. p. 261–4. ChapterGoogle Scholar
- Bundasak S. A healthy food recommendation system by combining clustering technology with the weighted slope one predictor. In: International Electrical Engineering Congress (iEECON’17), IEEE, Pattaya, Thailand, 2017, pp. 1–5.
- Vivek MB, Manju M, Vijay NB. Machine learning based food recipe recommendation system. In: International conference on cognition and recognition. Singapore: Springer; 2018. p. 11–9. ChapterGoogle Scholar
- Othman M, Zain NM, Muhamad UK. e-Diet meal recommender system for diabetic patients. In: Saian R, Abbas M, editors. Second international conference on the future of ASEAN (ICoFA’18). 2nd ed. Singapore: Springer; 2018. p. 155–64. Google Scholar
- Yajima A, Kobayashi I. "Easy" cooking recipe recommendation considering user's conditions. In: IEEE/WIC/ACM International Joint Conference on Web Intelligence and Intelligent Agent Technology (WI-IAT’ 09). IEEE/WIC/ACM, Milan, Italy, 2009, pp. 13–6.
- Pawar KR, Ghorpade T, Shedge R. Constraint based recipe recommendation using forward checking algorithm. In: International Conference on Advances in Computing, Communications and Informatics (ICACCI’ 16). IEEE, Jaipur, India, 2016, pp. 1474–8.
- Agapito G, et al. DIETOS: a dietary recommender system for chronic diseases monitoring and management. Comput Methods Progr Biomed. 2018;153:93–104. ArticleGoogle Scholar
- Freyne J, Berkovsky S. Recommending food: reasoning on recipes and ingredients. In: De Bra P, Kobsa A, Chin D, editors. User modeling, adaptation, and personalization 2010. LNCS. 6095th ed. Heidelberg: Springer; 2010. p. 381–6. Google Scholar
- Kim J, Chung K. Ontology-based healthcare context information model to implement ubiquitous environment. In: Ch M, editor. Multimedia tools and applications. 71st ed. LNCS; 2014. p. 873–88. Google Scholar
- De Pessemier T, Dooms S, Martens L. A food recommender for patients in a care facility. In: 7th ACM conference on recommender systems (RecSys 13). New York: ACM; 2013. p. 209–12. Google Scholar
- Bianchini D, De Antonellis V, Melchiori M. A food recommendation system based on semantic annotations and reference prescriptions. In: Jeusfeld M, Karlapalem K, editors. Advances in conceptual modeling 2015. LNCS. 9382nd ed. Cham: Springer; 2015. p. 134–43. ChapterGoogle Scholar
- Li Z, Hu J, Shen J, Xu Y. A scalable recipe recommendation system for mobile application. In: 3rd International Conference on Information Science and Control Engineering (ICISCE’ 16). IEEE, Beijing, China, 2016, pp. 91–4.
- Ting YH, Zhao Q, Chen RC. Dietary recommendation based on recipe ontology. In: IEEE 6th International Conference on Awareness Science and Technology (iCAST’ 14). IEEE, Paris, France, 2014, pp 1–6.
- Al-Nazer A, Helmy T. Toward a cross-cultural and cross-language multi-agent recommendation model for food and nutrition. In: IEEE/WIC/ACM International Conferences on Web Intelligence and Intelligent Agent Technology (WI-IAT’ 12). IEEE/WIC/ACM, Macau, China, 2012, pp. 245–9.
- Yalvaç F, Lim V, Hu J, Funk M, Rauterberg M. Social recipe recommendation to reduce food waste. In: Extended abstracts on human factors in computing systems (CHI EA 14). New York: ACM; 2014. p. 2431–6. Google Scholar
- Jung H, Chung K. Knowledge-based dietary nutrition recommendation for obese management. Inf Technol Manag. 2016;17:29–42. ArticleGoogle Scholar
- Aberg J. Dealing with malnutrition: a meal planning system for elderly. In: Ch M, editor. spring symposium on argumentation for consumers of health care. AAAI; 2006. Google Scholar
- Suksom N, Buranarach M, Thein Y, Supnithi T, Netisopakul P. A knowledge based framework for development of personalized food recommender system. In: 5th International Conference on Knowledge, Information and Creativity Support Systems 2010. Chiang Mai, Thailand, 2010.
- Subramaniyaswamy V, Manogaran G, Logesh R, Vijayakumar V, Chilamkurti N, Malathi D, Senthilselvan N. An ontology-driven personalized food recommendation in IoT-based healthcare system. J Supercomput. 2019;1(75):3184–216. ArticleGoogle Scholar
- Harvey M, Elsweiler D. Automated recommendation of healthy, personalised meal plans. In: 9th ACM conference on recommender systems (RecSys’ 15). New York: ACM; 2015. p. 327–8. Google Scholar
- Oh Y, Choi A, Woo W. u-BabSang: a context-aware food recommendation system. J Supercomput. 2010;54:61–81. ArticleGoogle Scholar
- Al Nazer A, Helmy T, Al Mulhem M. User’s profile ontology-based semantic framework for personalized food and nutrition recommendation. Proc Comput Sci. 2014;32:101–8. ArticleGoogle Scholar
- Tumnark P, Oliveira L, Santibutr N. Ontology-based personalized dietary recommendation for weightlifting. In: International workshop on computer science in sports (IWCSS 2013). Atlantis Press; 2013. p. 44–9. Google Scholar
- Bianchini D, Antonellis VD, Franceschi ND, Melchiori M. PREFer: a prescription-based food recommender system. Comput Stand Interfaces. 2017;54:64–75. ArticleGoogle Scholar
- El-Dosuky MA, Rashad MZ, Hamza TT, El-Bassiouny AH. Food recommendation using ontology and heuristics. In: Ch M, editor. Conference of advanced machine learning technologies and applications (AMLTA’ 12), communications in computer and information science. 322nd ed. Springer; 2012. p. 423–9. Google Scholar
- Arwan A, Sidiq M, Priyambadha B, Kristianto H, Sarno R. Ontology and semantic matching for diabetic food recommendations. In: International Conference on Information Technology and Electrical Engineering (ICITEE’ 13). IEEE, Yogyakarta, Indonesia, 2013, pp. 170–5.
- Lee CS, Wang MH, Li HC, Chen WH. Intelligent ontological agent for diabetic food recommendation. In: IEEE International Conference on Fuzzy Systems (IEEE World Congress on Computational Intelligence), IEEE, Hong Kong, China, 2008, pp. 1803–10.
- Lee CS, Wang MH. Hagras: a type-2 fuzzy ontology and its application to personal diabetic-diet recommendation. IEEE Trans Fuzzy Syst. 2010;18:374–95. Google Scholar
- Li Q, Chen W, Yu L. Community-based recipe recommendation and adaptation in peer-to-peer networks. In: International conference on ubiquitous information management and communication (ICUIMC 10), Article 18. New York: ACM; 2010. p. 6. Google Scholar
- Kuo FF, Li CT, Shan MK, Lee SY. Intelligent menu planning: recommending set of recipes by ingredients. In: Workshop on multimedia for cooking and eating activities (CEA ’12). New York: ACM; 2012. p. 1–6. Google Scholar
- Trevisiol M, Chiarandini L, Baeza-Yates R. Buonappetito: recommending personalized menus. In: 25th ACM conference on hypertext and social media (HT’ 14). New York: ACM; 2014. p. 327–9. ChapterGoogle Scholar
- Subramaniyaswamy V, Manogaran G, Logesh R, et al. RETRACTED ARTICLE: An ontology-driven personalized food recommendation in IoT-based healthcare system. J Supercomput. 2019;75:3184–216. ArticleGoogle Scholar
- Iwendi C, Khan S, Anajemba JH, Bashir AK, Noor F. Realizing an efficient IoMT-assisted patient diet recommendation system through machine learning model. IEEE Access. 2020;8:28462–74. ArticleGoogle Scholar
- Rostami M, Oussalah M, Farrahi V. A novel time-aware food recommender-system based on deep learning and graph clustering. IEEE Access. 2022;10:52508–24. ArticleGoogle Scholar
- Ritu S, Sugam S, Johnny W. MATURE-Food: food recommender system for mandatory feature choices a system for enabling digital health. Int J Inform Manag Data Insights. 2022;2(2):100. Google Scholar
- Oskouei SH, Hashemzadeh M. FoodRecNet: a comprehensively personalized food recommender system using deep neural networks. Knowl Inf Syst. 2023. https://doi.org/10.1007/s10115-023-01897-4. ArticleGoogle Scholar
- Zhang J, Wang Z, Liu W, et al. A unified approach to designing sequence-based personalized food recommendation systems: tackling dynamic user behaviors. Int J Mach Learn Cyber. 2023;14:2903–12. ArticleGoogle Scholar
- Outfarouin A. Towards a new healthy food decision-making system. Indones J Electr Eng Comput Sci. 2023. https://doi.org/10.11591/ijeecs.v31.i2.pp1088-1098. ArticleGoogle Scholar
- Rostami M, Farrahi V, Ahmadian S, Mohammad JJS, Oussalah M. A novel healthy and time-aware food recommender system using attributed community detection. Expert Syst Appl. 2023;221:119719. ArticleGoogle Scholar
- Starke AD, Musto C, Rapp A, et al. “Tell Me Why”: using natural language justifications in a recipe recommender system to support healthier food choices. User Model User-Adap Inter. 2023. https://doi.org/10.1007/s11257-023-09377-8. ArticleGoogle Scholar
- Li D, Zaki MJ, Chen C-H. Health-guided recipe recommendation over knowledge graphs. J Web Semant. 2023;75:100743. ArticleGoogle Scholar
- Ahmadian S, Rostami M, Jalali SMJ, et al. Healthy food recommendation using a time-aware community detection approach and reliability measurement. Int J Comput Intell Syst. 2022;15:105. ArticleGoogle Scholar
- Zhang J, Li M, Liu W, Lauria S, Liu X. Many-objective optimization meets recommendation systems: a food recommendation scenario. Neurocomputing. 2022;503:109. ArticleGoogle Scholar
- Thongsri N, Warintarawej P, Chotkaew S, Saetang W. Implementation of a personalized food recommendation system based on collaborative filtering and knapsack method. Int J Electr Comput Eng. 2022. https://doi.org/10.11591/ijece.v12i1.pp630-638. ArticleGoogle Scholar
Funding
No funds, grants, or other support was received.
Author information
Authors and Affiliations
- Department of Computer Engineering, Faculty of Science and Technology, Vishwakarma University, Pune, India Pratibha Mahajan
- Computer Science and Engineering Department, Guru Nanak Dev University Regional Campus, Jalandhar, India Pankaj Deep Kaur
- Pratibha Mahajan
You can also search for this author in PubMed Google Scholar
You can also search for this author in PubMed Google Scholar
Contributions
Corresponding author (PM) has prepared the manuscript under the guidance of PDK.
Corresponding author
Ethics declarations
Conflict of Interest
The authors have no financial or proprietary interests in any material discussed in this article.
Ethical Approval and Consent to Participate
Consent for Publication
All authors agreed with the content and that all gave explicit consent to submit and publish the manuscript.
Additional information
Publisher's Note
Springer Nature remains neutral with regard to jurisdictional claims in published maps and institutional affiliations.
Rights and permissions
Springer Nature or its licensor (e.g. a society or other partner) holds exclusive rights to this article under a publishing agreement with the author(s) or other rightsholder(s); author self-archiving of the accepted manuscript version of this article is solely governed by the terms of such publishing agreement and applicable law.
About this article
Cite this article
Mahajan, P., Kaur, P.D. A Systematic Literature Review of Food Recommender Systems. SN COMPUT. SCI. 5, 174 (2024). https://doi.org/10.1007/s42979-023-02537-y
- Received : 28 February 2023
- Accepted : 03 December 2023
- Published : 10 January 2024
- DOI : https://doi.org/10.1007/s42979-023-02537-y
Share this article
Anyone you share the following link with will be able to read this content:
Get shareable link
Sorry, a shareable link is not currently available for this article.
Copy to clipboard
Provided by the Springer Nature SharedIt content-sharing initiative
Keywords
- Recommender system
- Food/Recipe/Menu recommender system
- Information retrieval
- Food
- Recipe
- Menu