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Titlebook: Machine Learning and Knowledge Discovery in Databases. Research Track; European Conference, Nuria Oliver,Fernando Pérez-Cruz,Jose A. Lozano

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发表于 2025-3-21 16:55:26 | 显示全部楼层 |阅读模式
书目名称Machine Learning and Knowledge Discovery in Databases. Research Track
副标题European Conference,
编辑Nuria Oliver,Fernando Pérez-Cruz,Jose A. Lozano
视频video
丛书名称Lecture Notes in Computer Science
图书封面Titlebook: Machine Learning and Knowledge Discovery in Databases. Research Track; European Conference, Nuria Oliver,Fernando Pérez-Cruz,Jose A. Lozano
描述The multi-volume set LNAI 12975 until 12979 constitutes the refereed proceedings of the European Conference on Machine Learning and Knowledge Discovery in Databases, ECML PKDD 2021, which was held during September 13-17, 2021. The conference was originally planned to take place in Bilbao, Spain, but changed to an online event due to the COVID-19 pandemic. .The 210 full papers presented in these proceedings were carefully reviewed and selected from a total of 869 submissions...The volumes are organized in topical sections as follows:..Research Track:..Part I:. Online learning; reinforcement learning; time series, streams, and sequence models; transfer and multi-task learning; semi-supervised and few-shot learning; learning algorithms and applications...Part II:. Generative models; algorithms and learning theory; graphs and networks; interpretation, explainability, transparency, safety...Part III: .Generative models; search and optimization; supervised learning; text mining and natural language processing; image processing, computer vision and visual analytics...Applied Data Science Track:..Part IV:. Anomaly detection and malware; spatio-temporal data; e-commerce and finance; healthc
出版日期Conference proceedings 2021
关键词applied computing; artificial intelligence; communication systems; computer graphics; computer networks;
版次1
doihttps://doi.org/10.1007/978-3-030-86486-6
isbn_softcover978-3-030-86485-9
isbn_ebook978-3-030-86486-6Series ISSN 0302-9743 Series E-ISSN 1611-3349
issn_series 0302-9743
copyrightSpringer Nature Switzerland AG 2021
The information of publication is updating

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Conservative Online Convex Optimizationical applications might dissuade potential users from deploying such solutions. In this paper, we study a novel setting, namely ., in which we are optimizing a sequence of convex loss functions under the constraint that we have to perform at least as well as a known default strategy throughout the e
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Knowledge Infused Policy Gradients with Upper Confidence Bound for Relational Banditsr, most of the algorithms use flat feature vectors to represent context whereas, in the real world, there is a varying number of objects and relations among them to model in the context. For example, in a music recommendation system, the user context contains what music they listen to, which artists
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Exploiting History Data for Nonstationary Multi-armed Banditckle the nonstationary MAB setting, i.e., algorithms capable of detecting changes in the environment and re-configuring automatically to the change, has been widening the areas of application of MAB techniques. However, such approaches have the drawback of not reusing information in those settings w
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Learning to Build High-Fidelity and Robust Environment Modelssimulator) for serving diverse downstream tasks. Different from the environment learning in model-based RL, where the learned dynamics model is only appropriate to provide simulated data for the specific policy, the goal of RL2S is to build a simulator that is of high fidelity when interacting with
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Ensemble and Auxiliary Tasks for Data-Efficient Deep Reinforcement Learningbetween these two methods is not well studied, particularly in the context of deep reinforcement learning. In this paper, we study the effects of ensemble and auxiliary tasks when combined with the deep Q-learning algorithm. We perform a case study on ATARI games under limited data constraint. Moreo
发表于 2025-3-23 04:32:05 | 显示全部楼层
Multi-agent Imitation Learning with Copulasns, which is essential for understanding physical, social, and team-play systems. However, most existing works on modeling multi-agent interactions typically assume that agents make independent decisions based on their observations, ignoring the complex dependence among agents. In this paper, we pro
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CMIX: Deep Multi-agent Reinforcement Learning with Peak and Average Constraintsts, while acting in a decentralized manner. In this paper, we consider the problem of multi-agent reinforcement learning for a constrained, partially observable Markov decision process – where the agents need to maximize a global reward function subject to both peak and average constraints. We propo
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