ECML PKDD is the main European conference on machine learning and data mining. Since its foundation it implemented the publication model common in computer science: there was one conference deadline; conference submissions were reviewed by a program committee; papers were accepted with a low acceptance rate. Proceedings were published in several Springer Lecture Notes in Artificial (LNAI) volumes, while selected papers were invited to special issues of the Machine Learning and Data Mining and Knowledge Discovery journals. In recent years, this model has however come under stress. Problems include: reviews are of highly variable quality; the purpose of bringing the community together is lost; reviewing workloads are high; the information content of conferences and journals decreases; there is confusion among scientists in interdisciplinary contexts. In this paper, we present a new publication model, which will be adopted for the ECML PKDD 2013 conference, and aims to solve some of the problems of the traditional model. The key feature of this model is the creation of a journal track, which is open to submissions all year long and allows for revision cycles.
翻译:ECML PKDD是欧洲关于机器学习和数据挖掘及知识发现杂志的主要会议,自其建立以来,这是欧洲关于机器学习和数据挖掘的主要会议,自其建立以来,它实施了计算机科学共同的出版模式:有一个会议最后期限;会议提交材料由一个方案委员会审查;文件被接受率低;《人造书(LNAI)卷中的斯普林尔讲座说明》发表了会议记录,而一些论文被邀请参加《机器学习和数据挖掘及知识发现》杂志的特刊,但近年来,这一模式受到很大压力,问题包括:审查质量差异很大;将社区聚集在一起的目的丧失;工作量审查;会议和期刊的信息内容减少;科学家在跨学科背景下出现混乱;在本文件中,我们介绍了一个新的出版模式,将在2013年ECML PKDD会议上采用,目的是解决传统模型的一些问题;这一模式的主要特征是创建期刊轨道,全年开放提交,并允许修订周期。