华泰金工:人工智能选股深度研究 68 篇、6 周年回顾与 2022 年量化投资白皮书

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00-20230522-华泰人工智能研究6周年回顾.pdf 01-20170601-框架及经典算法简介.pdf 02-20170622-广义线性模型.pdf 03-20170804-支持向量机模型.pdf 04-20170817-朴素贝叶斯模型.pdf 05-20170831-随机森林模型.pdf 06-20170911-Boosting 模型.pdf 07-20170919-Python 实战.pdf 08-20171123-全连接神经网络.pdf ... 66-20230426-面向投资研究行业的GPT使用指南.pdf 67-20230506-AI模型如何一箭多雕_多任务学习.pdf 68-20230511-神经网络多频率因子挖掘模型.pdf 99-2022年度中国量化投资白皮书.pdf

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