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What is advantage of IRS assited NOMA? 


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Intelligent reflecting surface (IRS) assisted non-orthogonal multiple access (NOMA) offers several advantages. Firstly, it provides high throughput in future communication systems and is compatible with various communication techniques, such as NOMA . Secondly, IRS can enhance the channel condition between IoT devices (IDs) and access points (APs), enabling massive connectivity in IoT networks . Additionally, IRS-assisted NOMA can achieve lower outage performance and higher average rate compared to IRS-assisted orthogonal multiple access (OMA) . Moreover, IRS-NOMA can enhance the coverage and physical layer security of NOMA systems, especially when carefully ordering the NOMA users and considering wiretapping cases . Overall, IRS-assisted NOMA offers improved system performance, increased connectivity, enhanced coverage, and better security in future communication systems and IoT networks.

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The provided paper does not explicitly mention the advantage of IRS-assisted NOMA.
The advantage of IRS-assisted NOMA is that it can enhance the coverage and physical layer security of the system.
The advantage of IRS-assisted NOMA networks is that they can achieve lower outage performance and higher average rate compared to IRS-assisted orthogonal multiple access networks.
The provided paper does not explicitly mention the advantages of IRS-assisted NOMA.
The provided paper does not explicitly mention the specific advantages of IRS-assisted NOMA.

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