首页  学院概况  学院动态  师资队伍  本科生培养  研究生培养  学科建设  科学研究  党建工作  学生工作  教工之家 
首页>学科建设>学术动态>正文
[计信讲坛] 第108讲 Mining Complex Big Data: From Foundations to Real-World Artificial Intelligence
2022-03-29 08:15:04     (点击: )


[计信讲坛]第108讲 Mining Complex Big Data: From Foundations 

       to Real-World Artificial Intelligence



报告名称

Mining Complex Big Data: From Foundations to Real-World Artificial Intelligence


时   间

2022年3月31日星期四,下午4:00-6:00


地   点

信息科学楼学术报告厅


主 讲 人

吴佳


主办单位

计算机与信息学院


备注

内容简介:Big Data is an emerging paradigm, characterized by complex information that is beyond the processing capability of conventional tools. Traditional data analytics methods are commonly used in many applications, such as text classification and image recognition, and these data are often required to be represented as vectors for analysis purposes. While there are many real-world data objects that contain rich structure information, such as chemical compounds in bio-pharmacy, brain regions in brain networks and users in social networks. The simple feature-vector representation inherently loses the structure information of the objects. In reality, objects may have complicated characteristics, depending on how the objects are assessed and characterized. Data may also come from heterogeneous domains, such as traditional tabular-based data, sequential patterns, social networks, time series information, or semi-structured data. Processing, mining, and learning complex data refers to an advanced study area of data mining and knowledge discovery that concerns the development and analysis of approaches for discovering patterns and learning models for data with complex structures (e.g., time series, sequences, graphs, and bag constrained data). These kinds of data are commonly encountered in many artificial intelligence applications, such as brain science. Complex data poses new challenges for current research in data mining and knowledge discovery as new processing, mining, and learning methods are required.


个人简介:澳大利亚麦考瑞大学人工智能中心研究主管(Research Director) 、国际数据挖掘顶级期刊ACM Transactions on Knowledge Discovery Data(TKDD)副主编。2019 Heidelberg Laureate Forum Fellowship – 澳洲科学院 (Australian Academy of Science)。澳大利亚麦考瑞大学计算机学院副教授、博士研究生主管。主要研究领域为数据挖掘、机器学习、人工智能,及其在商业、工业、生物信息学、医疗信息学等领域的应用。迄今,在国际学术期刊和会议上共发表论文100多篇, 包括IEEE Transactions on Pattern Analysis and Machine Intelligence、IEEE Transactions on Knowledge and Data Engineering、IEEE Transactions on Neural Networks and Learning Systems、IEEE Transactions on Cybernetics、ACM Transactions on Knowledge Discovery Data、NIPS、WWW、KDD、ICDM、IJCAI、AAAI、CIKM等。指导学生曾获得2021年顶级数据挖掘大会IEEE International Conference on Data Mining (ICDM) 最佳学生论文奖、2018顶级国际数据挖掘大会SIAM International Conference on Data Mining (SDM) 最佳论文奖-Applied Data Science Track、2017顶级国际神经网络大会International Joint Conference on Neural Networks (IJCNN) 最佳学生论文奖。








上一条:[计信讲坛] 第109讲 网络与信息系统安...
下一条:[计信讲坛] 第107讲无线边缘智能的资源...

CopyRights ©2007-2008 All Rights Reserved 三峡大学计算机与信息学院
电 话:(0717)6393156   邮 编:443002
地 址:湖北省宜昌市大学路8号  电子邮件:jsjyb@ctgu
.edu.cn