2020
DOI: 10.22266/ijies2020.1031.22
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Physical Fitness Recommender Framework for Thyroid Patients using Restricted Boltzmann Machines

Abstract: These days, people can easily acquire the information from online sources. Individuals are generally using recommendation services before buying products considering the availability of online. Recommendation systems propose the relevant services or products to users. But sometimes people face issues while retrieving health related information from the recommender systems. A focus on keeping people healthy is one way to address the serious societal concern of healthcare domain. A health-based physical recommen… Show more

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“…The lack of intralayer connections simplifies the learning process. The work by Vairale et al [136] presents an application of RBMs to develop a personalized fitness recommendation system tailored for individuals diagnosed with thyroid conditions. RBMs are a particular class of generative artificial neural networks characterized by a bidirectional architecture, which operates in an unsupervised manner.…”
Section: Restricted Boltzmann Machine (Rbm)mentioning
confidence: 99%
“…The lack of intralayer connections simplifies the learning process. The work by Vairale et al [136] presents an application of RBMs to develop a personalized fitness recommendation system tailored for individuals diagnosed with thyroid conditions. RBMs are a particular class of generative artificial neural networks characterized by a bidirectional architecture, which operates in an unsupervised manner.…”
Section: Restricted Boltzmann Machine (Rbm)mentioning
confidence: 99%