Social Media Based Deep Auto-Encoder Model for Clinical Recommendation

Main Article Content

Kretika Tiwari
Dileep Kumar Singh

Abstract

One of the most actively studied topics in modern medicine is the use of deep learning and patient clinical data to make medication and ADR recommendations. However, the clinical community still has some work to do in order to build a model that hybridises the recommendation system. As a social media learning based deep auto-encoder model for clinical recommendation, this research proposes a hybrid model that combines deep self-decoder with Top n similar co-patient information to produce a joint optimisation function (SAeCR). Implicit clinical information can be extracted using the network representation learning technique. Three experiments were conducted on two real-world social network data sets to assess the efficacy of the SAeCR model. As demonstrated by the experiments, the suggested model outperforms the other classification method on a larger and sparser data set. In addition, social network data can help doctors determine the nature of a patient's relationship with a co-patient. The SAeCR model is more effective since it incorporates insights from network representation learning and social theory.

Article Details

How to Cite
Tiwari, K. ., & Singh, D. K. . (2022). Social Media Based Deep Auto-Encoder Model for Clinical Recommendation. International Journal on Recent and Innovation Trends in Computing and Communication, 10(1s), 44–51. https://doi.org/10.17762/ijritcc.v10i1s.5794
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References

Q. Zhou and C. Zhang, “Breaking community boundary: Comparing academic and social communication preferences regarding global pandemics,” Journal of Informetrics, vol. 15, no. 3, p. 101162, 2021.

K. Patel and H. B. Patel, “A state-of-the-art survey on recommendation system and prospective extensions,” Computers and Electronics in Agriculture, vol. 178, p. 105779, 2020.

J. G. Pereira, S. Tiwari, and S. Ajoy, “A survey on filtering techniques for recommen- dation system,” in 2020 IEEE International Symposium on Sustainable Energy, Signal Processing and Cyber Security (iSSSC), pp. 1–6, 2020.

A. Razgallah, R. Khoury, S. Hall´e, and K. Khanmohammadi, “A survey of malware detec- tion in android apps: Recommendations and perspectives for future research,” Computer Science Review, vol. 39, p. 100358, 2021.

Z. Wang, C. Tang, X. Sima, and L. Zhang, “Research on application of deep learning algorithm in image classification,” in 2021 IEEE Asia-Pacific Conference on Image Pro- cessing, Electronics and Computers (IPEC), pp. 1122–1125, 2021.

I. Lauriola, A. Lavelli, and F. Aiolli, “An introduction to deep learning in natural language processing: Models, techniques, and tools,” Neurocomputing, 2021.

R. Wang, Y. Jiang, and J. Lou, “Adcf: Attentive representation learning and deep collab- orative filtering model,” Knowledge-Based Systems, vol. 227, p. 107194, 2021.

L. Nguyen, H. Nam, “Latent factor recommendation models for integrating explicit and implicit preferences in a multi-step decision-making process,” Expert Systems with Appli- cations, vol. 174, p. 114772, 2021.

D.-K. Chae, S.-W. Kim, and J.-T. Lee, “Autoencoder-based personalized ranking frame- work unifying explicit and implicit feedback for accurate top-n recommendation,” Knowledge-Based Systems, vol. 176, pp. 110–12

J. Zheng, Q. Li, and J. Liao, “Heterogeneous type-specific entity representation learning for recommendations in e-commerce network,” Information Processing & Management, vol. 58, no. 5, p. 102629, 2021.

C.-X. Yin and Q.-K. Peng, “A careful assessment of recommendation algorithms related to dimension reduction techniques,” Knowledge-Based Systems, vol. 27, pp. 407–423, 2012.

J. Wang and L. Liu, “A multi-attention deep neural network model base on embedding and matrix factorization for recommendation,” International Journal of Cognitive Computing in Engineering, vol. 1, pp. 70–77, 2020.

T. Anwar and V. Uma, “Cd-spm: Cross-domain book recommendation using sequential pattern mining and rule mining,” Journal of King Saud University - Computer and In- formation Sciences, 2019.

M. Al-Hassan, H. Lu, and J. Lu, “A enhanced hybrid recommendation approach: A case study of e-government tourism service recommendation system,” Decision Support Systems, vol. 72, pp. 97–109, 2015.

T. Pradhan, S.Sahoo, U.Singh, and S. Pal, “A proactive decision support system for reviewer recommendation in academia,” Expert Systems with Applications, vol. 169, p. 114331, 2021.

S. Nath Sharma and P. Sadagopan, “Influence of conditional holoentropy-based feature selection on automatic recommendation system in e-commerce sector,” Journal of King Saud University - Computer and Information Sciences, 2021.

A. S. Tewari, “Generating items recommendations by fusing content and user-item based collaborative filtering,” Procedia Computer Science, vol. 167, pp. 1934–1940, 2020. Inter- national Conference on Computational Intelligence and Data Science.

S. Dhelim, N. Aung, and H. Ning, “Mining user interest based on personality-aware hybrid filtering in social networks,” Knowledge-Based Systems, vol. 206, p. 106227, 2020.

Q. Zhang and F. Ren, “Double bayesian pairwise learning for one-class collaborative fil- tering,” Knowledge-Based Systems, vol. 229, p. 107339, 2021.

A. Nocera and D. Ursino, “An approach to providing a user of a “social folksonomy” with recommendations of similar users and potentially interesting resources,” Knowledge-Based Systems, vol. 24, no. 8, pp. 1277–1296, 2011.

X. Yuan, L. Han, S. Qian, G. Xu, and H. Yan, “Singular value decomposition based recommendation using imputed data,” Knowledge-Based Systems, vol. 163, pp. 485–494, 2019.

M. M. Agu¨ero-Torales, J. I. Abreu Salas, and A. G. L´opez-Herrera, “Deep learning and multilingual sentiment analysis on social media data: An overview,” Applied Soft Com- puting, vol. 107, p. 107373, 2021.

G. Harshvardhan, M. K. Gourisaria, S. S. Rautaray, and M. Pandey, “Ubmtr: Unsupervised boltzmann machine-based time-aware recommendation system,” Journal of King Saud University - Computer and Information Sciences, 2021.

J. Misztal-Radecka and B. Indurkhya, “Bias-aware hierarchical clustering for detecting the discriminated groups of users in recommendation systems,” Information Processing & Management, vol. 58, no. 3, p. 102519, 2021.

H. Liu, Y. Wang, Q. Peng, F. Wu, L. Gan, L. Pan, and P. Jiao, “Hybrid neural recommen- dation with joint deep representation learning of ratings and reviews,” Neurocomputing, vol. 374, pp. 77–85, 2020.

S. Sharma, V. Rana, and V. Kumar, “Deep learning based personalized rec- ommendation system,” International Journal of Information Management Data Insights, vol. 1, no. 2, p. 100028, 2021.

Y. Lee, “Serendipity adjustable application recommendation via joint disentangled recur- rent variational auto-encoder,” Electronic Commerce Research and Applications, vol. 44, p. 101017, 2020.