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Abstract
Inspired by the boom of the consumer IoT market, many device manufacturers,
start-up companies and technology giants have jumped into the space.
Unfortunately, the exciting utility and rapid marketization of IoT, come at the
expense of privacy and security. Industry reports and academic work have
revealed many attacks on IoT systems, resulting in privacy leakage, property
loss and large-scale availability problems. To mitigate such threats, a few
solutions have been proposed. However, it is still less clear what are the
impacts they can have on the IoT ecosystem. In this work, we aim to perform a
comprehensive study on reported attacks and defenses in the realm of IoT aiming
to find out what we know, where the current studies fall short and how to move
forward. To this end, we first build a toolkit that searches through massive
amount of online data using semantic analysis to identify over 3000 IoT-related
articles. Further, by clustering such collected data using machine learning
technologies, we are able to compare academic views with the findings from
industry and other sources, in an attempt to understand the gaps between them,
the trend of the IoT security risks and new problems that need further
attention. We systemize this process, by proposing a taxonomy for the IoT
ecosystem and organizing IoT security into five problem areas. We use this
taxonomy as a beacon to assess each IoT work across a number of properties we
define. Our assessment reveals that relevant security and privacy problems are
far from solved. We discuss how each proposed solution can be applied to a
problem area and highlight their strengths, assumptions and constraints. We
stress the need for a security framework for IoT vendors and discuss the trend
of shifting security liability to external or centralized entities. We also
identify open research problems and provide suggestions towards a secure IoT
ecosystem.