
币圈荒木|Oct 10, 2025 02:51
This research, to put it bluntly—
No more being a 'hindsight genius,' but instead 'calling the shots ahead of time' and betting on whoever seems more reliable first.
What was the old approach? @AlloraNetworkAllora
The network would allocate weights based on the model's past performance. Whoever had a good track record got more say.
The problem was obvious: it’s too slow. When the market or environment changes, the model is still stuck in the past, not flexible enough to adapt.
This time, Allora went straight for the 'prediction' approach:
Instead of looking at who was strong in the past, it predicts who might perform well in the next round.
Using 'regret' and 'z-scores' as prediction metrics, the results are way better than just relying on loss alone.
Each model predicts itself, making it crystal clear which 'AI squad' might shine.
The experimental results are pretty impressive:
Whether it’s generated test data or Allora’s own testnet trials,
this predictive weight allocation method is simply more accurate and faster to respond, especially when the environment changes—it’s a clear advantage.
Here’s how I understand it:
The old way was like using a 'report card' to decide who gets to play.
Now it’s directly 'predicting who will win the next round' and putting resources on the one with the most potential first.
Once this logic runs smoothly, the entire network becomes smarter, more sensitive, and more like a brain with 'premonitions.'
No wonder Allora has been doubling down on strengthening its forecasting layer.
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