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Machine Learning

[D] icml, no rebuttal ack so far..

Almost all the papers I reviewed have received at least one ack, but I haven’t gotten a single rebuttal acknowledgment yet. Is there anyo...

Reddit - Machine Learning · 1 min ·
UMKC Announces New Master of Science in Artificial Intelligence
Ai Infrastructure

UMKC Announces New Master of Science in Artificial Intelligence

UMKC announces a new Master of Science in Artificial Intelligence program aimed at addressing workforce demand for AI expertise, set to l...

AI News - General · 4 min ·
Accelerating science with AI and simulations
Machine Learning

Accelerating science with AI and simulations

MIT Professor Rafael Gómez-Bombarelli discusses the transformative potential of AI in scientific research, emphasizing its role in materi...

AI News - General · 10 min ·

All Content

[2509.03345] Do Language Models Follow Occam's Razor? An Evaluation of Parsimony in Inductive and Abductive Reasoning
Llms

[2509.03345] Do Language Models Follow Occam's Razor? An Evaluation of Parsimony in Inductive and Abductive Reasoning

Abstract page for arXiv paper 2509.03345: Do Language Models Follow Occam's Razor? An Evaluation of Parsimony in Inductive and Abductive ...

arXiv - AI · 4 min ·
[2512.10152] Rethinking Bivariate Causal Discovery Through the Lens of Exchangeability
Machine Learning

[2512.10152] Rethinking Bivariate Causal Discovery Through the Lens of Exchangeability

Abstract page for arXiv paper 2512.10152: Rethinking Bivariate Causal Discovery Through the Lens of Exchangeability

arXiv - Machine Learning · 4 min ·
[2512.01906] Delays in Spiking Neural Networks: A State Space Model Approach
Machine Learning

[2512.01906] Delays in Spiking Neural Networks: A State Space Model Approach

Abstract page for arXiv paper 2512.01906: Delays in Spiking Neural Networks: A State Space Model Approach

arXiv - Machine Learning · 4 min ·
[2504.15780] TrustGeoGen: Formal-Verified Data Engine for Trustworthy Multi-modal Geometric Problem Solving
Llms

[2504.15780] TrustGeoGen: Formal-Verified Data Engine for Trustworthy Multi-modal Geometric Problem Solving

Abstract page for arXiv paper 2504.15780: TrustGeoGen: Formal-Verified Data Engine for Trustworthy Multi-modal Geometric Problem Solving

arXiv - AI · 4 min ·
[2503.03361] Concepts Learned Visually by Infants Can Contribute to Visual Learning and Understanding in AI Models
Machine Learning

[2503.03361] Concepts Learned Visually by Infants Can Contribute to Visual Learning and Understanding in AI Models

Abstract page for arXiv paper 2503.03361: Concepts Learned Visually by Infants Can Contribute to Visual Learning and Understanding in AI ...

arXiv - AI · 4 min ·
[2512.01678] Morphling: Fast, Fused, and Flexible GNN Training at Scale
Machine Learning

[2512.01678] Morphling: Fast, Fused, and Flexible GNN Training at Scale

Abstract page for arXiv paper 2512.01678: Morphling: Fast, Fused, and Flexible GNN Training at Scale

arXiv - Machine Learning · 4 min ·
[2511.22344] Cleaning the Pool: Progressive Filtering of Unlabeled Pools in Deep Active Learning
Machine Learning

[2511.22344] Cleaning the Pool: Progressive Filtering of Unlabeled Pools in Deep Active Learning

Abstract page for arXiv paper 2511.22344: Cleaning the Pool: Progressive Filtering of Unlabeled Pools in Deep Active Learning

arXiv - Machine Learning · 4 min ·
[2410.20894] Working Paper: Active Causal Structure Learning with Latent Variables: Towards Learning to Detour in Autonomous Robots
Machine Learning

[2410.20894] Working Paper: Active Causal Structure Learning with Latent Variables: Towards Learning to Detour in Autonomous Robots

Abstract page for arXiv paper 2410.20894: Working Paper: Active Causal Structure Learning with Latent Variables: Towards Learning to Deto...

arXiv - Machine Learning · 4 min ·
[2511.16992] FIRM: Federated In-client Regularized Multi-objective Alignment for Large Language Models
Llms

[2511.16992] FIRM: Federated In-client Regularized Multi-objective Alignment for Large Language Models

Abstract page for arXiv paper 2511.16992: FIRM: Federated In-client Regularized Multi-objective Alignment for Large Language Models

arXiv - Machine Learning · 4 min ·
[2511.14961] Graph Memory: A Structured and Interpretable Framework for Modality-Agnostic Embedding-Based Inference
Machine Learning

[2511.14961] Graph Memory: A Structured and Interpretable Framework for Modality-Agnostic Embedding-Based Inference

Abstract page for arXiv paper 2511.14961: Graph Memory: A Structured and Interpretable Framework for Modality-Agnostic Embedding-Based In...

arXiv - Machine Learning · 4 min ·
[2603.25741] Vega: Learning to Drive with Natural Language Instructions
Machine Learning

[2603.25741] Vega: Learning to Drive with Natural Language Instructions

Abstract page for arXiv paper 2603.25741: Vega: Learning to Drive with Natural Language Instructions

arXiv - AI · 3 min ·
[2510.13772] Tensor Gaussian Processes: Efficient Solvers for Nonlinear PDEs
Machine Learning

[2510.13772] Tensor Gaussian Processes: Efficient Solvers for Nonlinear PDEs

Abstract page for arXiv paper 2510.13772: Tensor Gaussian Processes: Efficient Solvers for Nonlinear PDEs

arXiv - Machine Learning · 4 min ·
[2603.25730] PackForcing: Short Video Training Suffices for Long Video Sampling and Long Context Inference
Machine Learning

[2603.25730] PackForcing: Short Video Training Suffices for Long Video Sampling and Long Context Inference

Abstract page for arXiv paper 2603.25730: PackForcing: Short Video Training Suffices for Long Video Sampling and Long Context Inference

arXiv - AI · 4 min ·
[2510.12453] Time-Correlated Video Bridge Matching
Machine Learning

[2510.12453] Time-Correlated Video Bridge Matching

Abstract page for arXiv paper 2510.12453: Time-Correlated Video Bridge Matching

arXiv - Machine Learning · 3 min ·
[2510.06790] Get RICH or Die Scaling: Profitably Trading Inference Compute for Robustness
Llms

[2510.06790] Get RICH or Die Scaling: Profitably Trading Inference Compute for Robustness

Abstract page for arXiv paper 2510.06790: Get RICH or Die Scaling: Profitably Trading Inference Compute for Robustness

arXiv - Machine Learning · 4 min ·
[2510.04900] Benchmarking M-LTSF: Frequency and Noise-Based Evaluation of Multivariate Long Time Series Forecasting Models
Machine Learning

[2510.04900] Benchmarking M-LTSF: Frequency and Noise-Based Evaluation of Multivariate Long Time Series Forecasting Models

Abstract page for arXiv paper 2510.04900: Benchmarking M-LTSF: Frequency and Noise-Based Evaluation of Multivariate Long Time Series Fore...

arXiv - Machine Learning · 4 min ·
[2603.25716] Out of Sight but Not Out of Mind: Hybrid Memory for Dynamic Video World Models
Machine Learning

[2603.25716] Out of Sight but Not Out of Mind: Hybrid Memory for Dynamic Video World Models

Abstract page for arXiv paper 2603.25716: Out of Sight but Not Out of Mind: Hybrid Memory for Dynamic Video World Models

arXiv - AI · 4 min ·
[2509.15199] CausalPre: Scalable and Effective Data Pre-Processing for Causal Fairness
Machine Learning

[2509.15199] CausalPre: Scalable and Effective Data Pre-Processing for Causal Fairness

Abstract page for arXiv paper 2509.15199: CausalPre: Scalable and Effective Data Pre-Processing for Causal Fairness

arXiv - Machine Learning · 4 min ·
[2508.09223] Hierarchical Adaptive networks with Task vectors for Test-Time Adaptation
Machine Learning

[2508.09223] Hierarchical Adaptive networks with Task vectors for Test-Time Adaptation

Abstract page for arXiv paper 2508.09223: Hierarchical Adaptive networks with Task vectors for Test-Time Adaptation

arXiv - AI · 4 min ·
[2509.08617] Towards Interpretable Deep Neural Networks for Tabular Data
Machine Learning

[2509.08617] Towards Interpretable Deep Neural Networks for Tabular Data

Abstract page for arXiv paper 2509.08617: Towards Interpretable Deep Neural Networks for Tabular Data

arXiv - Machine Learning · 3 min ·
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