会議情報
COLT 2025: Annual Conference on Learning Theory
https://learningtheory.org/colt2025/index.html
提出日:
2025-02-06
通知日:
2025-05-02
会議日:
2025-06-30
場所:
Lyon, France
年:
38
CCF: b   CORE: a*   QUALIS: a2   閲覧: 84391   追跡: 114   出席: 14

論文募集
The 38th Annual Conference on Learning Theory (COLT 2025) will take place June 30th-July 4th, 2025 in Lyon, France. We invite submissions of papers addressing theoretical aspects of machine learning, broadly defined as a subject at the intersection of computer science, statistics and applied mathematics. We strongly support an inclusive view of learning theory, including fundamental theoretical aspects of learnability in various contexts, and theory that sheds light on empirical phenomena.

The topics include but are not limited to:

    Design and analysis of learning algorithms
    Statistical and computational complexity of learning
    Optimization methods for learning, including online and stochastic optimization
    Theory of artificial neural networks, including deep learning
    Theoretical explanation of empirical phenomena in learning
    Supervised learning
    Unsupervised, semi-supervised learning, domain adaptation
    Learning geometric and topological structures in data, manifold learning
    Active and interactive learning
    Reinforcement learning
    Online learning and decision-making
    Interactions of learning theory with other mathematical fields
    High-dimensional and non-parametric statistics
    Kernel methods
    Causality
    Theoretical analysis of probabilistic graphical models
    Bayesian methods in learning
    Game theory and learning
    Learning with system constraints (e.g., privacy, fairness, memory, communication)
    Learning from complex data (e.g., networks, time series)
    Learning in neuroscience, social science, economics and other subjects

Submissions by authors who are new to COLT are encouraged.

While the primary focus of the conference is theoretical, authors are welcome to support their analysis with relevant experimental results.

Accepted papers will be presented at the conference. At least one author of each accepted paper should present the work at the conference. Accepted papers will be published electronically in the Proceedings of Machine Learning Research (PMLR). Authors of accepted papers will have the option of opting out of the proceedings in favor of a 1-page extended abstract, which will point to an open access archival version of the full paper reviewed for COLT.
最終更新 Dou Sun 2024-12-18
合格率
時間提出受け入れ受け入れ(%)
202038812030.9%
201939311830%
20183359127.2%
20172287432.5%
20162035326.1%
20151786234.8%
20141405237.1%
20131314735.9%
20121264132.5%
20081264434.9%
2007924144.6%
20061024342.2%
20051204537.5%
20041074441.1%
2003924953.3%
2002552647.3%
20001726236%
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関連仕訳帳
CCF完全な名前インパクト ・ ファクター出版社ISSN
IEEE Transactions on Learning Technologies2.900IEEE1939-1382
Mechanism and Machine Theory4.500Elsevier0094-114X
Language Learning & Technology3.800University of Hawaii Press1094-3501
ACM Transactions on Computation Theory0.800ACM1942-3454
aIEEE Transactions on Information Theory2.200IEEE0018-9448
Journal of Digital Learning in Teacher EducationTaylor & Francis2153-2974
bMachine Learning4.300Springer0885-6125
E-Learning and Digital MediaSAGE2042-7530
Law, Innovation and TechnologyTaylor & Francis1757-9961
aJournal of Machine Learning ResearchMicrotome Publishing1532-4435