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Feature Request: Implement Threshold-Consistent Margin Loss for Open-World Deep Metric Learning in TF-GNN #830

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imitation-alpha opened this issue Aug 10, 2024 · 1 comment
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enhancement New feature or request

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@imitation-alpha
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I propose adding the Threshold-Consistent Margin Loss (TCM) function to the TF-GNN library. TCM is a novel loss function specifically designed for open-world deep metric learning, which has shown significant improvements in handling unseen classes and imbalanced data compared to traditional loss functions.

Motivation:

Open-world scenarios: Many real-world applications involve open-world scenarios where new classes can emerge over time. TCM is well-suited for these challenges.
Improved performance: TCM has demonstrated superior performance in terms of accuracy and robustness compared to other loss functions in open-world settings.
Community benefit: Incorporating TCM into TF-GNN will benefit the broader machine learning community by providing a powerful tool for addressing open-world problems.
Implementation details:

Function definition: Implement the TCM loss function as a TensorFlow operation.
Hyperparameters: Allow users to configure TCM hyperparameters (e.g., margin, temperature) to fine-tune the loss.
Integration: Integrate TCM with existing TF-GNN components for seamless usage.
Documentation: Provide clear documentation and examples to guide users in using TCM effectively.
Additional notes:

Consider providing pre-trained models or transfer learning options to accelerate development.
Explore opportunities for optimization and performance improvements.

By incorporating TCM into TF-GNN, we can significantly enhance the library's capabilities for open-world deep metric learning and empower researchers and developers to tackle challenging real-world problems.

Paper

@arnoegw arnoegw added the enhancement New feature or request label Sep 6, 2024
@ricor07
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ricor07 commented Dec 25, 2024

Hello, I'd be glad to contribute to this issue

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