Answer what matters
Your profile, selected interests, priorities, and compatibility answers give Likert more signal than a swipe.
Likert keeps browsing familiar, then uses compatibility answers, ratings, skips, and feedback to make For You more relevant over time while exact interest stays private.

This is how the learning loop works: keep browsing naturally, give Likert richer answers and feedback, and let For You improve who appears first.
Your profile, selected interests, priorities, and compatibility answers give Likert more signal than a swipe.
Ratings, skips, and feedback teach the algorithm what feels right without turning reactions into public labels.
For You uses those signals to adjust discovery, so more relevant people can move up over time.
When interest is mutual, compatibility helps frame why the conversation may be worth starting.
Likert combines what you say, what you select, and how you privately respond to make For You feel more relevant over time. Exact interest and private compatibility answers are not public votes, public rankings, or attractiveness labels.
The For You screen keeps browsing familiar while learning from what you answer, rate, skip, and respond to. Likert separates discovery, learning, and matching so richer private answers and feedback can improve recommendations without becoming public scorekeeping.
Profiles carry preferences, priorities, interests, and compatibility answers into discovery.
Ratings, skips, and exact interest teach For You what feels relevant without becoming public.
Likert can move stronger fits higher as it learns from answers and reactions.

Private answers help explain why a profile may be worth attention.
Your reaction teaches Likert without publishing a score.
Readable profiles stay simple while deeper signals work behind the scenes.
Swipe apps reset after every profile. Likert keeps dating familiar, but turns answers and private feedback into better recommendations as you use it.
Fast, familiar, and often repetitive.
Familiar browsing with a learning layer underneath.
When interest is mutual, matching starts with more context.
Private answers and ratings stay private. They help Likert order For You without becoming public votes, public rankings, or attractiveness labels.
Profile details, priorities, interests, and 200+ compatibility signals give the algorithm more context than a swipe.
For You learns from what you rate, skip, and respond to, so the order can get sharper as you use it.
Likert opens carefully so members see enough nearby people and get recommendations shaped by fit, not endless motion.

Likert asks for information that can make matching better, then keeps deeper answers out of public profile presentation.
Privacy, visibility, notification, analytics, subscription, and deletion choices should be easy to find.
The policy explains deletion timing, recovery windows, safety exceptions, legal needs, billing, and support record handling.
