Improving Response Time of Home IoT Services in Federated Learning
- URL: http://arxiv.org/abs/2202.13626v1
- Date: Mon, 28 Feb 2022 09:08:10 GMT
- Title: Improving Response Time of Home IoT Services in Federated Learning
- Authors: Dongjun Hwang, Hyunsu Mun, Youngseok Lee
- Abstract summary: A recent machine learning approach, called federated learning, keeps user data on the device in the distributed computing environment.
It experiences poor performance in terms of the end-to-end response time in home IoT services.
We propose a local IoT control method for a federated learning home service that recognizes the user behavior in the home network quickly and accurately.
- Score: 0.6445605125467572
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: For intelligent home IoT services with sensors and machine learning, we need
to upload IoT data to the cloud server which cannot share private data for
training. A recent machine learning approach, called federated learning, keeps
user data on the device in the distributed computing environment. Though
federated learning is useful for protecting privacy, it experiences poor
performance in terms of the end-to-end response time in home IoT services,
because IoT devices are usually controlled by remote servers in the cloud. In
addition, it is difficult to achieve the high accuracy of federated learning
models due to insufficient data problems and model inversion attacks. In this
paper, we propose a local IoT control method for a federated learning home
service that recognizes the user behavior in the home network quickly and
accurately. We present a federated learning client with transfer learning and
differential privacy to solve data scarcity and data model inversion attack
problems. From experiments, we show that the local control of home IoT devices
for user authentication and control message transmission by the federated
learning clients improves the response time to less than 1 second. Moreover, we
demonstrate that federated learning with transfer learning achieves 97% of
accuracy under 9,000 samples, which is only 2% of the difference from
centralized learning.
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