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Certifying Data Removal in Federated Learning

Published:Dec 29, 2025 03:25
1 min read
ArXiv

Analysis

This paper addresses the critical issue of data privacy and the 'right to be forgotten' in vertical federated learning (VFL). It proposes a novel algorithm, FedORA, to efficiently and effectively remove the influence of specific data points or labels from trained models in a distributed setting. The focus on VFL, where data is distributed across different parties, makes this research particularly relevant and challenging. The use of a primal-dual framework, a new unlearning loss function, and adaptive step sizes are key contributions. The theoretical guarantees and experimental validation further strengthen the paper's impact.
Reference

FedORA formulates the removal of certain samples or labels as a constrained optimization problem solved using a primal-dual framework.

Research#llm🔬 ResearchAnalyzed: Jan 4, 2026 09:18

Smoothing DiLoCo with Primal Averaging for Faster Training of LLMs

Published:Dec 18, 2025 23:59
1 min read
ArXiv

Analysis

This article likely discusses a novel method to improve the training speed of Large Language Models (LLMs). The title suggests the use of "Smoothing DiLoCo" combined with "Primal Averaging." DiLoCo likely refers to a specific training technique or component, and the paper aims to optimize it. The source, ArXiv, indicates this is a research paper, suggesting a technical and potentially complex analysis of the proposed method.

Key Takeaways

    Reference

    Research#Tomography🔬 ResearchAnalyzed: Jan 10, 2026 10:12

    AI Enhances Single-View Tomographic Reconstruction

    Published:Dec 18, 2025 01:19
    1 min read
    ArXiv

    Analysis

    This research, published on ArXiv, explores the use of learned primal dual methods for single-view tomographic reconstruction. The application of AI in this field could lead to significant advancements in medical imaging and non-destructive testing.
    Reference

    The article is based on research published on ArXiv.