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{2021} } % 以下类型未在bst文件中验证过,如果需要请自行修改bst文件…… % (3)论文集 % [序号] 作者.论文题目.见(英文用In).主编.论文集名.出版地.出版年:页码范围. % 本模板没有实现“主编”部分,因为“见”和“论文集名”分离实在是很诡异的事情,且很多事情我们得到的bibTeX不含主编 % 中文需要加language={Chinese}字段,才会把"In"换成"见" % (4)学位论文(格式已验证) % [序号] 作者.题目.[学位论文](英文用[Dissertation]).保存地点.保存单位:年份. % 中文需要使用language={Chinese}字段,英文输入language={} % (5)专利 % [序号] 专利申请者.题目.国别.专利文献种类.专利号.批准日期. % (6)技术标准 % [序号] 起草责任者.标准代号.标准顺序号-发布年.标准名称.出版地.出版者.出版年度. %(7)在线资料 @misc{lendingclubdata, title = {Lending Club Data}, url = {https://www.lendingclub.com/info/download-data.action}, howpublished = {online} } @misc{fate, title = {FATE开源文档}, url = {https://github.com/FederatedAI/FATE}, howpublished = {online} } %(8)不属于任何上述类别的资料,指导手册中无规定,使用默认设置 @misc{联邦学习白皮书, author = {微众银行AI项目组}, title = {联邦学习白皮书 V1.0[R]}, year = {2018} }