Monteluna pfp
Monteluna
@monteluna
@vrypan.eth hey have you thought about using some tf-idf metrics when generating casts for wdim? Because I'm using "$tipn" in my casts a lot, the algorithm seemed to bias towards casts about "$tipn". Maybe filtering cash tags would be good? Could be a one off error but it basically didn't generate a lot of casts I would find interesting.
1 reply
0 recast
1 reaction

vrypan |--o--| pfp
vrypan |--o--|
@vrypan.eth
The current feed is 100% algorithmic. 1. It picks every cast (including replies) from the people you follow. 2. If the cast is a reply, it finds the root cast of the thread. 3. It scores the people you follow based on your last 1000 interactions with them (likes, recasts). 4. It sorts the list of casts generated in 1&2, based on the score in 3. I'm working on an alternative, using AI.
2 replies
0 recast
1 reaction

Monteluna pfp
Monteluna
@monteluna
Wondering if also adding a @quotient score could help. I'm on the android client and can't show a screenshot unfortunately, but my top of feed was basically $tipn folks I've never heard of. Ranking by reactions is somewhat dangerous since it can be bottled, but weighing by pagerank style scorers might improve the algo. You may not have to weigh the reactions themselves but at least the casts themselves might be better.
1 reply
0 recast
1 reaction

Jordan pfp
Jordan
@ruminations
Quotient is rolling out an API (currently in beta) that might be helpful for this. We currently have a reputation endpoint (for filtering, boosting) and mutuals endpoint (for trusted discovery). https://quotient-1.gitbook.io/quotient-api-beta lmk if you want an API key
0 reply
0 recast
0 reaction