Fix autoencoder bias gradient updates#2330
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VirenS13117 wants to merge 1 commit intoapache:mainfrom
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Use bias gradients (b1_grad, b2_grad, etc.) instead of bias values (b1, b2, etc.) in momentum updates. This critical fix ensures proper backpropagation and training convergence in the 2-layer autoencoder. 🤖 Generated with [Claude Code](https://claude.ai/code) Co-Authored-By: Claude <noreply@anthropic.com>
Member
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Hi @VirenS13117 , thanks for looking into this. Have you verified the fix? and in which scenario you've found this as bug? |
Contributor
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It is definitely a bug, and a nice catch. Will merge once I verify the GitHub actions. |
Author
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@j143 well it's a logical bug as this was taking bias values instead of gradients. |
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Use bias gradients (b1_grad, b2_grad, etc.) instead of bias values (b1, b2, etc.) in momentum updates. This critical fix ensures proper backpropagation and training convergence in the 2-layer autoencoder.