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Information Rate Decomposition for Noisy Nanopore Channels with Geometric Duplication

arXiv:2606.06808v1 Announce Type: new Abstract: This paper studies information rates of noisy duplication channels with memory, motivated by nanopore DNA sequencing. In nanopore sequencing, the measured signal is affected by both inter-symbol interference (ISI), caused by multiple DNA bases residing in the pore, and random sample duplications, where variable translocation speed causes each base to generate a random number of samples.

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FMRFusion: Frequency-Aware Multi-View Representation Learning for Heterogeneous Image Fusion

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SPLIT-PINN: Separable Probability Learning Technique via Physics-Informed Neural Networks for High-Dimensional Probabilistic Modeling

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Disentangled Feature Importance

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Velocity space origins of pressure-strain interaction in multi-population distributions and its application to magnetic reconnection

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Fraud Type Decomposition and the Observation-Mechanism Taxonomy:Class-Specific Detection Limits in Payment Networks

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Microskill Architecture: A Modular Skill-Driven Framework for AI-Native Code Generation

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Beyond Additive Decompositions: Interpretability Through Separability

Announce Type: replace Abstract: Interpretable machine learning requires models that are accurate and structurally faithful to the data. Existing explainability methods rely heavily on additive representations (e.g., Generalized Additive Models (GAMs), SHapley Additive exPlanations (SHAP), functional ANOVA), which can suffer from signal cancellation and off-support extrapolation in the presence of strong interactions. We propose Tensor Separation Learning (TSL), a regression model that...

arXiv CS 8d ago

Beyond Additive Decompositions: Interpretability Through Separability

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Warming unlocks ancient carbon in Tibetan permafrost, triggering climate tipping point

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