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                             丁世飞(1963-), 男, 博士, 教授, 博士生导师,                郭丽丽(1990-), 女, 博士, 副教授, CCF  专业会
                            CCF  杰出会员, 主要研究领域为人工智能与模                     员, 主要研究领域为深度学习, 情感计算, 语音情
                            式识别, 机器学习, 数据挖掘, 大数据智能分析.                    感识别, 多模态情感识别.



                             朱姜兰(1996-), 男, 博士生, 主要研究领域为机                 张健(1990-), 男, 博士, 副教授, CCF  专业会员,
                            器学习, 随机配置网络.                                 主要研究领域为机器学习, 深度学习.




                             张成龙(1992-), 男, 博士生, 主要研究领域为随
                            机配置网络, 智能优化算法.
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