[{"data":1,"prerenderedAt":-1},["ShallowReactive",2],{"$fUj4z852e66zN2n9em42Ny8Po4u8oeBf65d5Uy_kRWnI":3},{"answer":4,"createTime":5,"id":6,"options":7,"origin":12,"question":19,"related":20,"source":30,"type":31},[],"2026-01-13 14:23:34",311318049,[8,9,10,11],"余弦相似度","欧式距离","均方误差(MSE)","Jaccard 相似度",{"count":13,"courseId":14,"courseImg":15,"courseName":16,"workId":17,"workName":18},14,"53e1d2ef4961cca8eea3e23969ad2cb9","https:\u002F\u002Ftihai-oss-cloud.itihey.com\u002Fimg\u002F03a579384a6dc297c89809b582fcc767.png","默认课程","9425d18261444a8f8c3b3c56f00d0690","单元测试","以下哪种不属于文本相似度的计算方法?( )",[21,32,35,44,53,62,71,80,89,98],{"answer":22,"createTime":5,"id":23,"options":24,"question":29,"source":30,"type":31},[],311318048,[25,26,27,28],"一个完整的句子","分词后的最小处理单位","词向量的维度","文本的语义标签","自然语言处理(NLP)中,&quot;Token&quot; 的本质是( )","v1",0,{"answer":33,"createTime":5,"id":6,"options":34,"question":19,"source":30,"type":31},[],[8,9,10,11],{"answer":36,"createTime":5,"id":37,"options":38,"question":43,"source":30,"type":31},[],311318050,[39,40,41,42],"CBOW 和 Skip-Gram","编码器和解码器","BERT 和 GPT","词袋模型和 Seq2Seq","Word2Vec 包含的两种核心模型是( )",{"answer":45,"createTime":5,"id":46,"options":47,"question":52,"source":30,"type":31},[],311318051,[48,49,50,51],"循环结构","卷积操作","自注意力机制","池化层","Transformer 模型的核心创新是( )",{"answer":54,"createTime":5,"id":55,"options":56,"question":61,"source":30,"type":31},[],311318052,[57,58,59,60],"GPT","BERT","Seq2Seq","T5","仅采用编码器结构,擅长语义理解任务的模型是( )",{"answer":63,"createTime":5,"id":64,"options":65,"question":70,"source":30,"type":31},[],311318053,[66,67,68,69],"无法处理长文本","忽略词语的顺序和上下文关系","词向量维度过高","训练效率低","词袋模型(BoW)的主要缺陷是( )",{"answer":72,"createTime":5,"id":73,"options":74,"question":79,"source":30,"type":31},[],311318054,[75,76,77,78],"词性标注","图像分割","机器翻译","命名实体识别","以下哪种不属于 NLP 的典型任务?( )",{"answer":81,"createTime":5,"id":82,"options":83,"question":88,"source":30,"type":31},[],311318055,[84,85,86,87],"语义理解","自然语言生成","多模态处理","并行计算效率","GPT 系列模型的核心优势是( )",{"answer":90,"createTime":5,"id":91,"options":92,"question":97,"source":30,"type":31},[],311318056,[93,94,95,96],"我","爱","北京","安门","文本 &quot;我爱北京天安门&quot; 分词后,按词分的 Token 不包括( )",{"answer":99,"createTime":5,"id":100,"options":101,"question":106,"source":30,"type":31},[],311318057,[102,103,104,105],"完全不同的概念","词向量是技术,词嵌入是数据存在形式","词嵌入是词向量的子集","词向量维度高于词嵌入","词向量和词嵌入的关系是( )"]