State-of-the-Art Survey on Deep Learning-Based Recommender Systems for E-Learning
Abstract
:1. Introduction
- Overview of traditional and nontraditional recommendation techniques;
- Synthesis of prior work on RSs for learning based on:
- a
- Recommendation techniques;
- b
- Recommendation goals (supporting user tasks);
- c
- Platforms (mobile or web-based);
- d
- Kind of users (For students, teachers, or both students and teachers).
- Proposing potential future research direction on RSs for learning and other related application domains.
- To what extent is research in deep learning-based RSs in e-learning?
- What is the frequency of usage of each recommendation technique? In other words, which techniques are used more often to implement RSs for learning?
- Which user tasks (recommendation goal) do people pay more attention to?
- Are RSs for learning capable of making unexpected and fortunate recommendations?
- What is the ratio between chatbot, mobile, and web-based RSs for learning?
- Technology-enhanced learning concerns teaching and learning, which received considerable attention from researchers on RSs?
- With new recommendation techniques (deep learning, context-aware, and multi-criteria rating techniques), has research in this domain shifted toward those new techniques?
2. Recommender Systems for E-Learning
2.1. Related Works
2.2. Methods of Evaluating Recommender Systems for Learning
3. Classification Method
3.1. Classification Based on Recommendation Techniques
- To find out the set of items that liked previously and then find the similarity between them and ;
- To find out people who like and try to compute their similarities with .
3.1.1. Collaborative Filtering
3.1.2. Content-Based Technique
3.1.3. Knowledge-Based Technique
3.1.4. Hybrid Recommendation Technique
3.1.5. Context-Aware RS
- User Context: i.e., the location, companions, social situation, or even the user profile;
- Computing Context: i.e., communication cost and bandwidth, the strength of the connectivity, and available resources, such as a computer, printer, workstation, etc.;
- Physical context: i.e., weather conditions, noise, traffic levels, etc.
3.1.6. Multi-Criteria RS
- Break down the multi-criteria ratings into single ratings and use any traditional recommendation technique to find the values. I.e., instead of , use , where );
- Define the function that can take multi-criteria ratings to produce , just as in Table 1, where the function was defined as the average of multiple ratings;
- Lastly, Equation (13) will be used to predict .
3.1.7. Deep Learning-Based RS
3.1.8. Other Techniques
3.2. Classification Based on Recommendation Goals
- Recommend Sequence: For recommending a series of related items;
- Find Credible Recommenders: Making recommendations while at a testing stage;
- Annotation in Context: Suggest an additional recommendation to the user while using the existing one;
- Find Good Items: Recommending the user a ranked list of specific items;
- Just Browsing: Recommend items even when the user did not request them;
- Find All Good Items: Recommending all appropriate items.
- Find Novel Items: Provide the learner with novel or new learning objects;
- Find Peers: Find and recommend other learners with similar interests as the learner;
- Find Good Pathways: Recommending different possible learning pathways.
3.3. Classification Based on Platform
- Online (also called web-based): implementation online can be accessed easily once the user has an electronic device connected to the internet;
- Offline: it is an implementation that is not hosted on the web;
- Chatbot: involves using an agent (a computer program that simulates and processes human conversations as if they were real people) to interact with users;
- Mobile-based: an implementation that can be accessed via a mobile device.
3.4. Classification Based on User Type
4. Results and Discussion
4.1. Recommendation Goals
4.2. Recommendation Techniques
4.3. Recommendation Based on Platform
4.4. Recommendation Based on User Type
4.5. Classification Based on Publication Type
4.6. Deep Learning-Based RS in E-Learning Research
5. Conclusions and Future Work
- Building RSs for learning to support various user tasks to provide serendipitous recommendations;
- Putting more effort into developing mobile-based and chatbot-based RSs for learning;
- Building RSs specifically for teachers, as only 6% of our reviewed papers were designed to be used by teachers;
- Nontraditional RSs, especially multi-criteria ratings RSs, which have direct applications in this domain, are also promising approaches for future work. Moreover, the primary concern still open to the RSs community is finding suitable optimization algorithms that can explore the relationships between multiple ratings to compute an overall rating [153]. Future research needs to explore selection techniques such as intelligent data pre-processing and segmentation to ascertain the best criteria for modeling multi-criteria RSs for learning.
- Integrating learning styles into learning systems can lead to an intelligent and adaptive learning system that can adjust the content to ensure faster and better performance in the learning process [154]. Several systems, such as [148], proposed assessing students’ learning styles, which can be easily extended to a context-aware recommendation;
- Most researchers followed a traditional approach; therefore, more efforts similar to introducing transfer learning, as suggested by [148], need to be put in place to tackle data sparsity problems in collaborative filtering and over-specialization problems in content-based filtering. These problems can be mitigated by successfully implementing serendipitous RSs for learning. Further work is required to build RSs for learning to solve these problems and avoid recommending apparent items;
- As mentioned in the last paragraph, one of the outstanding issues for RSs for learning is the modern-day changes that show how social media has become a significant player in almost all our daily activities. Consequently, the challenge lies in following this trend and developing social network-based RSs for learning; this will be an exciting area for future research.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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User/Item | Item1 | Item2 | Item3 | Item4 |
---|---|---|---|---|
User1 | 2.5,4,3,2,1 | 3.5,5,2,4,3 | 4,4,5,5,2 | 1,1,0,2,1 |
User2 | ?,?,?,?,? | 1,0,0,0,4 | 2,3,2,2,1 | 0,0,0,0,0 |
User3 | ?,?,?,?,? | 4,4,5,5,2 | 5,5,5,5,5 | ?,?,?,?,? |
User4 | 4.5,4,5,5,4 | 1.5,2,1,1,2 | 5,5,5,5,5 | 0,0,0,0,0 |
User5 | 3,4,3,2,3 | ?,?,?,?,? | ?,?,?,?,? | 2.5,3,3,2,2 |
Tasks | Works on the User Task |
---|---|
Find Novel Items | [37,38,39,40,41,42,43] |
Find Peers | [19,43,44,45,46,47,48] |
Recommend Sequence | [49,50,51,52,53,54,55,56] |
Annotation in Context | [57,58,59,60,61] |
Find Good Pathways | [62,63,64,65,66,67,68,69] |
Find Good Items/Find All Good Items | [44,70,71,72,73,74,75,76,77,78,79,80,81,82,83,84,85,86,87,88,89,90,91,92,93,94,95,96,97,98,99,100,101,102,103,104,105,106,107,108,109,110,111,112,113,114,115,116,117,118,119,120,121,122,123,124,125,126,127,128,129,130,131,132,133,134,135,136,137,138,139,140,141,142,143,144,145,146,147,148,149,150,151] |
Year | Collaborative Filtering | Content-Based | Knowledge-Based | Rule-Based | Hybrid | Context-Aware | Deep Learning | Others |
---|---|---|---|---|---|---|---|---|
2021 | [68,138,141,146,149] | [61] | [69] | [138,148] | [139,144,145] | [140] | [56,142] | [137,143,147,151] |
2020 | [48,126,127,129,131,133,150] | [67] | [130] | [114,123,128,135,136] | [55] | [54,125,132] | [124,134] | |
2019 | [106,107,108,111,112,120,121] | [113] | [118] | [119] | [60,110] | [53,106,115,116,122] | [109,117,118] | |
2018 | [43,64,86,103,104,105] | [42,96,101] | [98] | [52,65,97,99,102] | [43] | [42,66] | [100] | |
2017 | [41,84,87,92,95] | [39] | [94] | [40,59,85,89,90,93] | [88] | [91] | ||
2016 | [19,73,75,76,77,79] | [79] | [80,81] | [51,63,82,83] | [74,78] | |||
2015 | [37,38,47,71,72] | [44] | [71] | [45,46,50] | [57,58] | [49,62,70] |
Country | Alpha Code | No. of Papers | Country | Alpha Code | No. of Papers | Country | Alpha Code | No. of Papers |
---|---|---|---|---|---|---|---|---|
China | CN | 34 | Pakistan | PK | 2 | Mexico | MX | 1 |
India | IN | 12 | Ecuador | EC | 2 | Colombia | CO | 1 |
USA | US | 10 | Germany | DE | 2 | Canada | CA | 1 |
Morocco | MA | 9 | Bangladesh | BD | 2 | Israel | IL | 1 |
Indonesia | ID | 4 | South Korea | KR | 2 | Czech | CZ | 1 |
Brazil | BR | 4 | Serbia | RS | 1 | Australia | AU | 1 |
Greece | GR | 3 | Saudi Arabia | SA | 1 | Thailand | TH | 1 |
Jordan | JO | 3 | Malaysia | MY | 1 | Taiwan | TW | 1 |
Vietnam | VN | 2 | Italy | IT | 1 | New Zealand | NZ | 1 |
Tunisia | TN | 2 | Philippines | PH | 1 | France | FR | 1 |
Spain | ES | 2 | Nigeria | NG | 1 | Lithuania | LT | 1 |
Netherlands | NL | 2 | Japan | JP | 1 | UK | GB | 1 |
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Salau, L.; Hamada, M.; Prasad, R.; Hassan, M.; Mahendran, A.; Watanobe, Y. State-of-the-Art Survey on Deep Learning-Based Recommender Systems for E-Learning. Appl. Sci. 2022, 12, 11996. https://doi.org/10.3390/app122311996
Salau L, Hamada M, Prasad R, Hassan M, Mahendran A, Watanobe Y. State-of-the-Art Survey on Deep Learning-Based Recommender Systems for E-Learning. Applied Sciences. 2022; 12(23):11996. https://doi.org/10.3390/app122311996
Chicago/Turabian StyleSalau, Latifat, Mohamed Hamada, Rajesh Prasad, Mohammed Hassan, Anand Mahendran, and Yutaka Watanobe. 2022. "State-of-the-Art Survey on Deep Learning-Based Recommender Systems for E-Learning" Applied Sciences 12, no. 23: 11996. https://doi.org/10.3390/app122311996
APA StyleSalau, L., Hamada, M., Prasad, R., Hassan, M., Mahendran, A., & Watanobe, Y. (2022). State-of-the-Art Survey on Deep Learning-Based Recommender Systems for E-Learning. Applied Sciences, 12(23), 11996. https://doi.org/10.3390/app122311996