Northern Norway
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- Europe > Germany > Bavaria > Upper Bavaria > Munich (0.05)
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- Europe > Germany > Bavaria > Upper Bavaria > Munich (0.05)
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VAIN: Attentional Multi-agent Predictive Modeling
One of the drawbacks of INs is scaling with the number of interactions in the system (typically quadratic or higher order in the number of agents). In this paper we introduce V AIN, a novel attentional architecture for multi-agent predictive modeling that scales linearly with the number of agents. We show that V AIN is effective for multi-agent predictive modeling.
- North America > United States > California > Los Angeles County > Long Beach (0.04)
- Europe > Norway > Northern Norway > Troms > Tromsø (0.04)
- Europe > Italy > Calabria > Catanzaro Province > Catanzaro (0.04)
- Leisure & Entertainment > Sports > Soccer (0.96)
- Leisure & Entertainment > Games > Chess (0.70)
Deep Learning-Driven Downscaling for Climate Risk Assessment of Projected Temperature Extremes in the Nordic Region
Loganathan, Parthiban, Zea, Elias, Vinuesa, Ricardo, Otero, Evelyn
Rapid changes and increasing climatic variability across the widely varied Koppen-Geiger regions of northern Europe generate significant needs for adaptation. Regional planning needs high-resolution projected temperatures. This work presents an integrative downscaling framework that incorporates Vision Transformer (ViT), Convolutional Long Short-Term Memory (ConvLSTM), and Geospatial Spatiotemporal Transformer with Attention and Imbalance-Aware Network (GeoStaNet) models. The framework is evaluated with a multicriteria decision system, Deep Learning-TOPSIS (DL-TOPSIS), for ten strategically chosen meteorological stations encompassing the temperate oceanic (Cfb), subpolar oceanic (Cfc), warm-summer continental (Dfb), and subarctic (Dfc) climate regions. Norwegian Earth System Model (NorESM2-LM) Coupled Model Intercomparison Project Phase 6 (CMIP6) outputs were bias-corrected during the 1951-2014 period and subsequently validated against earlier observations of day-to-day temperature metrics and diurnal range statistics. The ViT showed improved performance (Root Mean Squared Error (RMSE): 1.01 degrees C; R^2: 0.92), allowing for production of credible downscaled projections. Under the SSP5-8.5 scenario, the Dfc and Dfb climate zones are projected to warm by 4.8 degrees C and 3.9 degrees C, respectively, by 2100, with expansion in the diurnal temperature range by more than 1.5 degrees C. The Time of Emergence signal first appears in subarctic winter seasons (Dfc: approximately 2032), signifying an urgent need for adaptation measures. The presented framework offers station-based, high-resolution estimates of uncertainties and extremes, with direct uses for adaptation policy over high-latitude regions with fast environmental change.
- Europe > Northern Europe (0.24)
- Europe > United Kingdom > England > Cambridgeshire > Cambridge (0.14)
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MvHo-IB: Multi-View Higher-Order Information Bottleneck for Brain Disorder Diagnosis
Zhang, Kunyu, Li, Qiang, Yu, Shujian
Recent evidence suggests that modeling higher-order interactions (HOIs) in functional magnetic resonance imaging (fMRI) data can enhance the diagnostic accuracy of machine learning systems. However, effectively extracting and leveraging HOIs remains a significant challenge. In this paper, we propose MvHo-IB, a novel multi-view learning framework that seamlessly integrates pairwise interactions and HOIs for diagnostic decision-making while automatically compressing task-irrelevant redundant information. Our approach introduces several key innovations: (1) a principled framework combining O -information from information theory with the recently developed matrix-based Rényi's α - order entropy functional estimator to quantify and extract HOIs, (2) a purpose-built Brain3DCNN encoder designed to effectively utilize these interactions, and (3) a novel multiview learning information bottleneck objective to enhance representation learning. Experiments on three benchmark fMRI datasets demonstrate that MvHo-IB achieves state-of-the-art performance, outperforming existing methods, including modern hypergraph-based techniques, by significant margins. The code of our MvHo-IB is available at https://github.com/zky04/MvHo-IB .
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- Asia > China > Henan Province > Zhengzhou (0.04)
- North America > United States > Georgia > Fulton County > Atlanta (0.04)
- Europe > Norway > Northern Norway > Troms > Tromsø (0.04)
- Health & Medicine > Therapeutic Area > Neurology (1.00)
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- Health & Medicine > Diagnostic Medicine (1.00)
Random Spiking Neural Networks are Stable and Spectrally Simple
Araya, Ernesto, Datres, Massimiliano, Kutyniok, Gitta
Spiking neural networks (SNNs) are a promising paradigm for energy-efficient computation, yet their theoretical foundations-especially regarding stability and robustness-remain limited compared to artificial neural networks. In this work, we study discrete-time leaky integrate-and-fire (LIF) SNNs through the lens of Boolean function analysis. We focus on noise sensitivity and stability in classification tasks, quantifying how input perturbations affect outputs. Our main result shows that wide LIF-SNN classifiers are stable on average, a property explained by the concentration of their Fourier spectrum on low-frequency components. Motivated by this, we introduce the notion of spectral simplicity, which formalizes simplicity in terms of Fourier spectrum concentration and connects our analysis to the simplicity bias observed in deep networks. Within this framework, we show that random LIF-SNNs are biased toward simple functions. Experiments on trained networks confirm that these stability properties persist in practice. Together, these results provide new insights into the stability and robustness properties of SNNs.
- Europe > Germany > North Rhine-Westphalia > Upper Bavaria > Munich (0.04)
- Europe > United Kingdom > England > Cambridgeshire > Cambridge (0.04)
- Europe > Norway > Northern Norway > Troms > Tromsø (0.04)
- Europe > Germany > Bavaria > Upper Bavaria > Munich (0.04)
Uncertainty Quantification for Regression: A Unified Framework based on kernel scores
Bülte, Christopher, Sale, Yusuf, Kutyniok, Gitta, Hüllermeier, Eyke
Regression tasks, notably in safety-critical domains, require proper uncertainty quantification, yet the literature remains largely classification-focused. In this light, we introduce a family of measures for total, aleatoric, and epistemic uncertainty based on proper scoring rules, with a particular emphasis on kernel scores. The framework unifies several well-known measures and provides a principled recipe for designing new ones whose behavior, such as tail sensitivity, robustness, and out-of-distribution responsiveness, is governed by the choice of kernel. We prove explicit correspondences between kernel-score characteristics and downstream behavior, yielding concrete design guidelines for task-specific measures. Extensive experiments demonstrate that these measures are effective in downstream tasks and reveal clear trade-offs among instantiations, including robustness and out-of-distribution detection performance.
- Europe > Germany > Bavaria > Upper Bavaria > Munich (0.04)
- North America > United States (0.04)
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Defending against Stegomalware in Deep Neural Networks with Permutation Symmetry
Torpmann-Hagen, Birk, Riegler, Michael A., Halvorsen, Pål, Johansen, Dag
Deep neural networks are being utilized in a growing number of applications, both in production systems and for personal use. Network checkpoints are as a consequence often shared and distributed on various platforms to ease the development process. This work considers the threat of neural network stegomalware, where malware is embedded in neural network checkpoints at a negligible cost to network accuracy. This constitutes a significant security concern, but is nevertheless largely neglected by the deep learning practitioners and security specialists alike. We propose the first effective countermeasure to these attacks. In particular, we show that state-of-the-art neural network stegomalware can be efficiently and effectively neutralized through shuffling the column order of the weight- and bias-matrices, or equivalently the channel-order of convolutional layers. We show that this effectively corrupts payloads that have been embedded by state-of-the-art methods in neural network steganography at no cost to network accuracy, outperforming competing methods by a significant margin. We then discuss possible means by which to bypass this defense, additional defense methods, and advocate for continued research into the security of machine learning systems.
- Europe > Norway > Northern Norway > Troms > Tromsø (0.04)
- Europe > Norway > Eastern Norway > Oslo (0.04)
- Asia > Singapore (0.04)
- North America > United States (0.04)
- Overview (0.93)
- Research Report > Promising Solution (0.34)
Generalisation of automatic tumour segmentation in histopathological whole-slide images across multiple cancer types
Skrede, Ole-Johan, Pradhan, Manohar, Isaksen, Maria Xepapadakis, Hveem, Tarjei Sveinsgjerd, Vlatkovic, Ljiljana, Nesbakken, Arild, Lindemann, Kristina, Kristensen, Gunnar B, Kasius, Jenneke, Zeimet, Alain G, Brustugun, Odd Terje, Busund, Lill-Tove Rasmussen, Richardsen, Elin H, Haug, Erik Skaaheim, Brennhovd, Bjørn, Rewcastle, Emma, Lillesand, Melinda, Kvikstad, Vebjørn, Janssen, Emiel, Kerr, David J, Liestøl, Knut, Albregtsen, Fritz, Kleppe, Andreas
Deep learning is expected to aid pathologists by automating tasks such as tumour segmentation. We aimed to develop one universal tumour segmentation model for histopathological images and examine its performance in different cancer types. The model was developed using over 20 000 whole-slide images from over 4 000 patients with colorectal, endometrial, lung, or prostate carcinoma. Performance was validated in pre-planned analyses on external cohorts with over 3 000 patients across six cancer types. Exploratory analyses included over 1 500 additional patients from The Cancer Genome Atlas. Average Dice coefficient was over 80% in all validation cohorts with en bloc resection specimens and in The Cancer Genome Atlas cohorts. No loss of performance was observed when comparing the universal model with models specialised on single cancer types. In conclusion, extensive and rigorous evaluations demonstrate that generic tumour segmentation by a single model is possible across cancer types, patient populations, sample preparations, and slide scanners.
- Europe > United Kingdom > England > Oxfordshire > Oxford (0.14)
- Europe > Norway > Eastern Norway > Oslo (0.06)
- Europe > Norway > Western Norway > Rogaland > Stavanger (0.05)
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- Research Report > New Finding (1.00)
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- Health & Medicine > Therapeutic Area > Oncology > Prostate Cancer (0.48)
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