{"title":"主旨发言人","authors":"Abel Bliss","doi":"10.1109/ies50839.2020.9231783","DOIUrl":null,"url":null,"abstract":"The real-world big data are largely unstructured, interconnected, and dynamic, in the form of natural language text. It is highly desirable to transform such massive unstructured data into structured knowledge. Many researchers rely on labor-intensive labeling and curation to extract knowledge from such data. However, such approaches may not be scalable, especially considering that a lot of text corpora are highly dynamic and domain-specific. On the other hand, massive text data itself may disclose a large body of hidden patterns, structures, and knowledge. Equipped with domain-independent and domain-dependent knowledge-bases, we should explore the power of massive data itself for turning unstructured data into structured knowledge. By organizing massive text documents into multidimensional text cubes, structured knowledge can be extracted and used effectively. In this talk, we introduce a set of methods developed recently in our group for such an exploration, including mining quality phrases, entity recognition and typing, multi-faceted taxonomy construction, and construction and exploration of multi-dimensional text cubes. We show that data-driven approach could be a promising direction at transforming massive text data into structured knowledge. Biography Jiawei Han is Abel Bliss Professor in the Department of Computer Science, University of Illinois at UrbanaChampaign. He has been researching into data mining, information network analysis, database systems, and data warehousing, with over 900 journal and conference publications. He has chaired or served on many program committees of international conferences in most data mining and database conferences. 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However, such approaches may not be scalable, especially considering that a lot of text corpora are highly dynamic and domain-specific. On the other hand, massive text data itself may disclose a large body of hidden patterns, structures, and knowledge. Equipped with domain-independent and domain-dependent knowledge-bases, we should explore the power of massive data itself for turning unstructured data into structured knowledge. By organizing massive text documents into multidimensional text cubes, structured knowledge can be extracted and used effectively. In this talk, we introduce a set of methods developed recently in our group for such an exploration, including mining quality phrases, entity recognition and typing, multi-faceted taxonomy construction, and construction and exploration of multi-dimensional text cubes. We show that data-driven approach could be a promising direction at transforming massive text data into structured knowledge. 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引用次数: 0
摘要
现实世界的大数据大多是非结构化的、相互关联的、动态的,以自然语言文本的形式存在。将如此庞大的非结构化数据转化为结构化知识是非常必要的。许多研究人员依靠劳动密集型的标签和管理来从这些数据中提取知识。然而,这种方法可能不具有可伸缩性,特别是考虑到许多文本语料库是高度动态和特定于领域的。另一方面,海量文本数据本身可能会揭示大量隐藏的模式、结构和知识。有了领域独立和领域依赖的知识库,我们应该探索海量数据本身将非结构化数据转化为结构化知识的力量。通过将海量文本文档组织成多维文本立方体,可以有效地提取和利用结构化知识。在这次演讲中,我们介绍了我们小组最近为这种探索开发的一套方法,包括挖掘质量短语,实体识别和输入,多面分类法构建以及多维文本立方体的构建和探索。我们表明,数据驱动的方法可能是将大量文本数据转换为结构化知识的一个有前途的方向。韩佳伟,伊利诺伊大学香槟分校计算机科学系Abel Bliss教授。他的研究领域包括数据挖掘、信息网络分析、数据库系统和数据仓库,发表了900多篇期刊和会议论文。他曾在大多数数据挖掘和数据库国际会议中担任多个项目委员会的主席或委员。他还担任ACM Transactions on Knowledge Discovery from Data的创始主编和信息总监
The real-world big data are largely unstructured, interconnected, and dynamic, in the form of natural language text. It is highly desirable to transform such massive unstructured data into structured knowledge. Many researchers rely on labor-intensive labeling and curation to extract knowledge from such data. However, such approaches may not be scalable, especially considering that a lot of text corpora are highly dynamic and domain-specific. On the other hand, massive text data itself may disclose a large body of hidden patterns, structures, and knowledge. Equipped with domain-independent and domain-dependent knowledge-bases, we should explore the power of massive data itself for turning unstructured data into structured knowledge. By organizing massive text documents into multidimensional text cubes, structured knowledge can be extracted and used effectively. In this talk, we introduce a set of methods developed recently in our group for such an exploration, including mining quality phrases, entity recognition and typing, multi-faceted taxonomy construction, and construction and exploration of multi-dimensional text cubes. We show that data-driven approach could be a promising direction at transforming massive text data into structured knowledge. Biography Jiawei Han is Abel Bliss Professor in the Department of Computer Science, University of Illinois at UrbanaChampaign. He has been researching into data mining, information network analysis, database systems, and data warehousing, with over 900 journal and conference publications. He has chaired or served on many program committees of international conferences in most data mining and database conferences. He also served as the founding Editor-In-Chief of ACM Transactions on Knowledge Discovery from Data and the Director of Information