# System Points Model

#### FansR: Fan Reputation

Fan Reputation (abbreviated as "FansR") is an innovative credit scoring system for fan digital identities on the iMFun platform. It serves as a factor influencing fan users' acquisition of FUN POINTS (system on-chain points) at the FUN base of the iMFun platform. The more FansR accumulated within the same period, the more FUN POINTS can be earned on the system platform. Fan users can complete relevant tasks, browse, learn, publish, socialize, and engage in consumption at the FUN base to gain FansR.

**Permanent FansR:**&#x4C;ong-lasting, allowing continuous participation in FUN POINTS distribution

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**Happy FansR:** Generally has a larger value but has a fixed validity period, participating in FUN POINTS distribution only during the effective period. Once the period exceeds, it will automatically become invalid.

#### On-chain Points System

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Blockchain technology and NFT applications enable the iMFun platform to provide a one-stop solution for fan digital identity verification, allowing iMFun participants to self-register, self-manage, and self-validate their identity behaviors, processes, results, workload, contributions, and credibility, as well as the intellectual property rights of the data and content created by fan users.

In the future, the iMFun platform will reward fan users with FUN POINTS based on their FansR. FUN POINTS can be used for consumption exchanges on the iMFun platform (discounts, unlocking content, topic interactions, cash sharing, redeeming benefits, etc.). Additionally, after accumulating a certain value, they can also receive airdrop rewards of iMFun system ecological virtual tokens.

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