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Reputation System for Communication Structuring #282

@akolonin

Description

@akolonin

Reputation System for Communication Structuring (might be interesting for SNET as well as other parties)

  • Explore the communication graphs between team/group/channel/community members to identify trending topics vs. sentiment (and cognitive distortions?) about these topics
  • Explore reputations of the community members treating these topics
  • Assess the reliability of the topics vs. sentiment from perspective of reputations of the agents generating them
  • Come up with framework of community member reputation assessment along with communication topic trending and sentiment assessment
  • Run the experiments according to the above on
    — simulation model
    — Steemit/Twitter/Reddit/Telegram/etc.
  • Have the above implemented in either
    — a) https://github.com/aigents/aigents-java/blob/master/src/main/java/net/webstructor/peer/Reputationer.java (can have full support from @akolonin , need to learn Java, no simulation present)
    — b) https://github.com/singnet/reputation (all in Python, simulation prototype is in-place but might need to get changed)
    — c) combine both (RS engine from a, simulation from b)
    Resources:
    https://aigents.medium.com/ - whatever is found on Reputation and Sentiment

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