Collaborative Machine Learning-Driven Internet of Medical Things -- A
Systematic Literature Review
- URL: http://arxiv.org/abs/2207.06416v1
- Date: Wed, 13 Jul 2022 12:28:17 GMT
- Title: Collaborative Machine Learning-Driven Internet of Medical Things -- A
Systematic Literature Review
- Authors: Rohit Shaw
- Abstract summary: The growing adoption of IoT devices for healthcare has enabled researchers to build intelligence using all the data produced by these devices.
Monitoring and diagnosing health have been the two most common scenarios where such devices have proven beneficial.
Achieving high prediction accuracy was a top priority initially, but the focus has slowly shifted to efficiency and higher throughput.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The growing adoption of IoT devices for healthcare has enabled researchers to
build intelligence using all the data produced by these devices. Monitoring and
diagnosing health have been the two most common scenarios where such devices
have proven beneficial. Achieving high prediction accuracy was a top priority
initially, but the focus has slowly shifted to efficiency and higher
throughput, and processing the data from these devices in a distributed manner
has proven to help achieve both. Since the field of machine learning is vast
with numerous state-of-the-art algorithms in play, it has been a challenge to
identify the algorithms that perform best in different scenarios. In this
literature review, we explored the distributed machine learning algorithms
tested by the authors of the selected studies and identified the ones that
achieved the best prediction accuracy in each healthcare scenario. While no
algorithm performed consistently, Random Forest performed the best in a few
studies. This could serve as a good starting point for future studies on
collaborative machine learning on IoMT data.
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