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Generalizability of experimental studies

arXiv:2406.17374v3 Announce Type: replace Abstract: Experimental studies are a cornerstone of Machine Learning (ML) research. A common and often implicit assumption is that the study’s results will generalize beyond the study itself, e.g., to new data. That is, repeating the…

Near-Optimal Experiment Design in Linear non-Gaussian Cyclic Models

arXiv:2509.21423v2 Announce Type: replace-cross Abstract: We study the problem of causal structure learning from a combination of observational and interventional data generated by a linear non-Gaussian structural equation model that might contain cycles. Recent results show that using mere observational…

Decoding Large Language Diffusion Models with Foreseeing Movement

arXiv:2512.04135v1 Announce Type: new Abstract: Large Language Diffusion Models (LLDMs) benefit from a flexible decoding mechanism that enables parallelized inference and controllable generations over autoregressive models. Yet such flexibility introduces a critical challenge: inference performance becomes highly sensitive to the…

LLMscape

arXiv:2511.07161v2 Announce Type: replace Abstract: LLMscape is an interactive installation that investigates how humans and AI construct meaning under shared conditions of uncertainty. Within a mutable, projection-mapped landscape, human participants reshape the world and engage with multiple AI agents, each…

Network of Theseus (like the ship)

arXiv:2512.04198v1 Announce Type: new Abstract: A standard assumption in deep learning is that the inductive bias introduced by a neural network architecture must persist from training through inference. The architecture you train with is the architecture you deploy. This assumption…