Intelligible Machine Learning and Knowledge Discovery Boosted by Visual Means

Boris Kovalerchuk
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引用次数: 1

Abstract

Intelligible machine learning and knowledge discovery are important for modeling individual and social behavior, user activity, link prediction, community detection, crowd-generated data, and others. The role of the interpretable method in web search and mining activities is also very significant to enhance clustering, classification, data summarization, knowledge acquisition, opinion and sentiment mining, web traffic analysis, and web recommender systems. Deep learning success in accuracy of prediction and its failure in explanation of the produced models without special interpretation efforts motivated the surge of efforts to make Machine Learning (ML) models more intelligible and understandable. The prominence of visual methods in getting appealing explanations of ML models motivated the growth of deep visualization, and visual knowledge discovery. This tutorial covers the state-of-the-art research, development, and applications in the area of Intelligible Knowledge Discovery, and Machine Learning boosted by Visual Means.
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视觉手段促进的可理解机器学习和知识发现
可理解的机器学习和知识发现对于建模个人和社会行为、用户活动、链接预测、社区检测、人群生成数据等非常重要。可解释方法在网络搜索和挖掘活动中的作用也非常重要,可以增强聚类、分类、数据汇总、知识获取、意见和情感挖掘、网络流量分析和网络推荐系统。深度学习在预测准确性方面的成功,以及在没有特殊解释的情况下对生成模型的解释方面的失败,促使人们努力使机器学习(ML)模型更容易理解。视觉方法在获得机器学习模型的吸引人的解释方面的突出作用推动了深度可视化和视觉知识发现的发展。本教程涵盖了可理解知识发现领域的最新研究、开发和应用,以及由视觉手段推动的机器学习。
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