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YZ Sözlüğü

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162
kategoriler
2.032
alt kategoriler
23.060
terimler
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terimler

Model Personalization

Process of adapting a generic global model to meet the specific preferences and individual characteristics of each user or device.

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Local Fine-tuning

Technique involving fine-tuning the parameters of the global model on each client's local data after initial federated training to maximize individual relevance.

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Federated Meta-learning

Approach combining meta-learning and federated learning where the model learns to quickly adapt to new tasks or specific preferences of each user.

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Weighted Aggregation

Method of fusing local model updates where each contribution is weighted according to quality metrics, data quantity, or relevance to the end user.

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Client Adaptation

Strategy where each client performs customized adjustments to the received model according to its specific characteristics before or after global aggregation.

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Global Base Model

Fundamental model architecture shared among all clients, serving as a common starting point for local personalized adaptations.

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Local Overfitting

Phenomenon where a personalized model over-adapts to a user's specific data, losing its ability to generalize to new inputs.

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Data Heterogeneity

Statistical and distributional variation of data between different clients in a federated system, requiring adaptive personalization strategies.

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Federated Transfer Learning

Combination of transfer learning and federated learning to effectively adapt global knowledge to the specific contexts of each user.

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Federated Multi-task

Extension of federated learning where a single model simultaneously learns multiple customized tasks for different users or contexts.

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Distributed Continual Learning

Paradigm where models continuously adapt to new local data without forgetting previous knowledge, while maintaining global consistency.

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Federated Clustering

Technique for grouping clients into clusters based on their data similarities or preferences to optimize model personalization by group.

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Hybrid Architecture

Combination of multiple personalization approaches (fine-tuning, meta-learning, etc.) in a federated system to optimize adaptation to individual needs.

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Local-Global Optimization

Iterative process of balancing between improving customized local performance and maintaining the consistency and global performance of the federated model.

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