You accidentally glance at a picture of a frog for 14 seconds because you're mid-sneeze, and suddenly every recommendation algorithm in existence decides you're a herpetology enthusiast. Next thing you know, your entire feed is amphibian-themed content, frog memes, and probably ads for terrarium supplies.
The algorithm doesn't care about context—it only sees engagement metrics. Dwell time? Check. Eye tracking? Check. Clearly you're obsessed with frogs now. No amount of "not interested" clicks will save you from the frog content pipeline you've been algorithmically sentenced to. The machine learning model has spoken, and it has determined your new identity: frog person.
This is why recommendation systems need way more features than just time-on-screen. Intent detection, negative signals, and maybe some basic common sense would help, but nah—let's just spam users with content based on a single accidental interaction.
AI
AWS
Agile
Algorithms
Android
Apple
Bash
C++