Performance evaluation of health recommendation system based on deep neural network

Deep learning has developed as an innovative zone of machine learning and data mining exploration part. Controlled or unconfirmed methodologies which contain of a number of layers of handling which form a hierarchy are castoff for preparation in deep learning. Every succeeding layer mines an ever more intellectual depiction of the input data and shapes upon the depiction from the preceding layer, usually by calculating a nonlinear alteration of its input. The constraints of these alterations are adjusted by preparation of the prototypical on a dataset. A deep learning prototypical studies better depiction as it is delivered with more volumes of data. Key objective of using deep learning methods in recommender schemes is to lower time complexity and to increase the accurateness of formed expectations. In this paper, performance of planned HRS is evaluated by Arbitration Time, Latency Time, Jitter, Execution Time, Network Bandwidth Consumption, Power Consumption, Training Accuracy and Testing Accuracy.

[1]  Alejandro Baldominos Gómez,et al.  DataCare: Big Data Analytics Solution for Intelligent Healthcare Management , 2018, Int. J. Interact. Multim. Artif. Intell..

[2]  Anton Civit,et al.  HealthRecSys: A semantic content-based recommender system to complement health videos , 2017, BMC Medical Informatics and Decision Making.

[3]  Tiejian Luo,et al.  A Recommendation Model Based on Deep Neural Network , 2018, IEEE Access.

[4]  Cihan Kaleli,et al.  A review on deep learning for recommender systems: challenges and remedies , 2018, Artificial Intelligence Review.

[5]  Georgia Koutrika Recent Advances in Recommender Systems: Matrices, Bandits, and Blenders , 2018, EDBT.

[6]  M. H. Abdi,et al.  A Survey of Context-Aware Healthcare Recommender Systems , 2017 .

[7]  K. Mansouri,et al.  Personalized recommender system for e-Learning environment based on student’s preferences , 2018 .

[8]  Viju Raghupathi,et al.  Big data analytics in healthcare: promise and potential , 2014, Health Information Science and Systems.

[9]  Rabindra K. Barik,et al.  DeepReco: Deep Learning Based Health Recommender System Using Collaborative Filtering , 2019, Comput..

[10]  Surekha Mariam Varghese,et al.  A Scalable Product Recommendations Using Collaborative Filtering in Hadoop for Bigdata , 2016 .

[11]  Hyun-Ho Lee,et al.  A Smart Recommender Based on Hybrid Learning Methods for Personal Well-Being Services , 2019, Sensors.

[12]  Donghui Wang,et al.  A content-based recommender system for computer science publications , 2018, Knowl. Based Syst..

[13]  Farah Magrabi,et al.  Automation bias in electronic prescribing , 2017, BMC Medical Informatics and Decision Making.

[14]  JinHyun Jooa,et al.  Implementation of a Recommendation System Using Association Rules and Collaborative Filtering , 2016 .

[15]  Daniel Rueckert,et al.  Deep Learning for Cardiac Image Segmentation: A Review , 2020, Frontiers in Cardiovascular Medicine.

[16]  Gediminas Adomavicius,et al.  Toward the next generation of recommender systems: a survey of the state-of-the-art and possible extensions , 2005, IEEE Transactions on Knowledge and Data Engineering.

[17]  Satya Prakash Sahu,et al.  Machine Learning Algorithms for Recommender System - a comparative analysis , 2017 .

[18]  Usman Qamar,et al.  HCF-CRS: A Hybrid Content based Fuzzy Conformal Recommender System for providing recommendations with confidence , 2018, PloS one.

[19]  Kamal Kant Hiran,et al.  Machine Learning and Deep Learning in Real-Time Applications , 2020 .