用户名  找回密码
 To register

QQ登录

只需一步,快速开始

扫一扫,访问微社区

Titlebook: Machine Learning and Knowledge Discovery in Databases, Part III; European Conference, Dimitrios Gunopulos,Thomas Hofmann,Michalis Vazirg Co

[复制链接]
查看: 36698|回复: 65
发表于 2025-3-21 19:53:53 | 显示全部楼层 |阅读模式
书目名称Machine Learning and Knowledge Discovery in Databases, Part III
副标题European Conference,
编辑Dimitrios Gunopulos,Thomas Hofmann,Michalis Vazirg
视频video
概述Fast-track conference proceedings.State-of-the-art research.Up-to-date results
丛书名称Lecture Notes in Computer Science
图书封面Titlebook: Machine Learning and Knowledge Discovery in Databases, Part III; European Conference, Dimitrios Gunopulos,Thomas Hofmann,Michalis Vazirg Co
描述This three-volume set LNAI 6911, LNAI 6912, and LNAI 6913 constitutes the refereed proceedings of the European conference on Machine Learning and Knowledge Discovery in Databases: ECML PKDD 2011, held in Athens, Greece, in September 2011.The 121 revised full papers presented together with 10 invited talks and 11 demos in the three volumes, were carefully reviewed and selected from about 600 paper submissions. The papers address all areas related to machine learning and knowledge discovery in databases as well as other innovative application domains such as supervised and unsupervised learning with some innovative contributions in fundamental issues; dimensionality reduction, distance and similarity learning, model learning and matrix/tensor analysis; graph mining, graphical models, hidden markov models, kernel methods, active and ensemble learning, semi-supervised and transductive learning, mining sparse representations, model learning, inductive logic programming, and statistical learning. a significant part of the papers covers novel and timely applications of data mining and machine learning in industrial domains.
出版日期Conference proceedings 2011
关键词decision theory; high-dimensional clustering; natural language processing; recommender systems; self-org
版次1
doihttps://doi.org/10.1007/978-3-642-23808-6
isbn_softcover978-3-642-23807-9
isbn_ebook978-3-642-23808-6Series ISSN 0302-9743 Series E-ISSN 1611-3349
issn_series 0302-9743
copyrightSpringer-Verlag GmbH Berlin Heidelberg 2011
The information of publication is updating

书目名称Machine Learning and Knowledge Discovery in Databases, Part III影响因子(影响力)




书目名称Machine Learning and Knowledge Discovery in Databases, Part III影响因子(影响力)学科排名




书目名称Machine Learning and Knowledge Discovery in Databases, Part III网络公开度




书目名称Machine Learning and Knowledge Discovery in Databases, Part III网络公开度学科排名




书目名称Machine Learning and Knowledge Discovery in Databases, Part III被引频次




书目名称Machine Learning and Knowledge Discovery in Databases, Part III被引频次学科排名




书目名称Machine Learning and Knowledge Discovery in Databases, Part III年度引用




书目名称Machine Learning and Knowledge Discovery in Databases, Part III年度引用学科排名




书目名称Machine Learning and Knowledge Discovery in Databases, Part III读者反馈




书目名称Machine Learning and Knowledge Discovery in Databases, Part III读者反馈学科排名




单选投票, 共有 0 人参与投票
 

0票 0%

Perfect with Aesthetics

 

0票 0%

Better Implies Difficulty

 

0票 0%

Good and Satisfactory

 

0票 0%

Adverse Performance

 

0票 0%

Disdainful Garbage

您所在的用户组没有投票权限
发表于 2025-3-21 20:24:30 | 显示全部楼层
发表于 2025-3-22 02:08:29 | 显示全部楼层
Preference Elicitation and Inverse Reinforcement Learningn. This generalises previous work on Bayesian inverse reinforcement learning and allows us to obtain a posterior distribution on the agent’s preferences, policy and optionally, the obtained reward sequence, from observations. We examine the relation of the resulting approach to other statistical met
发表于 2025-3-22 05:27:14 | 显示全部楼层
A Novel Framework for Locating Software Faults Using Latent Divergencest and is costly. Recent years have seen much progress in techniques for automated fault localization, specifically using program spectra – executions of failed and passed test runs provide a basis for isolating the faults. Despite the progress, fault localization in large programs remains a challeng
发表于 2025-3-22 08:43:17 | 显示全部楼层
Transfer Learning with Adaptive Regularizersrm that matches with the learning task at hand. If the necessary domain expertise is rare or hard to formalize, it may be difficult to find a good regularizer. On the other hand, if plenty of related or similar data is available, it is a natural approach to adjust the regularizer for the new learnin
发表于 2025-3-22 14:50:23 | 显示全部楼层
Multimodal Nonlinear Filtering Using Gauss-Hermite Quadratureas single Gaussian distributions. In nonlinear filtering problems the posterior state distribution can, however, take complex shapes and even become multimodal so that single Gaussians are no longer sufficient. A standard solution to this problem is to use a bank of independent filters that individu
发表于 2025-3-22 17:25:27 | 显示全部楼层
Active Supervised Domain Adaptationning in a target domain can leverage information from a different but related source domain. Our proposed framework, Active Learning Domain Adapted (.), uses source domain knowledge to transfer information that facilitates active learning in the target domain. We propose two variants of .: a batch B
发表于 2025-3-22 23:54:25 | 显示全部楼层
Efficiently Approximating Markov Tree Bagging for High-Dimensional Density Estimatione mixtures generally outperform a single Markov tree maximizing the data likelihood, but are far more expensive to compute. In this paper, we describe new algorithms for approximating such models, with the aim of .. More specifically, we propose to use a filtering step obtained as a by-product from
发表于 2025-3-23 04:31:03 | 显示全部楼层
发表于 2025-3-23 09:20:08 | 显示全部楼层
 关于派博传思  派博传思旗下网站  友情链接
派博传思介绍 公司地理位置 论文服务流程 影响因子官网 SITEMAP 大讲堂 北京大学 Oxford Uni. Harvard Uni.
发展历史沿革 期刊点评 投稿经验总结 SCIENCEGARD IMPACTFACTOR 派博系数 清华大学 Yale Uni. Stanford Uni.
|Archiver|手机版|小黑屋| 派博传思国际 ( 京公网安备110108008328) GMT+8, 2025-6-8 10:14
Copyright © 2001-2015 派博传思   京公网安备110108008328 版权所有 All rights reserved
快速回复 返回顶部 返回列表