Markov bot - A Writing bot based on Markov Chain for Data Structure Lab

Overview

基于马尔可夫链的写作机器人

前端

用html/css完成

  1. Demo展示(已给出文本的相应展示)

  2. 用户提供相关的语料库后训练的成果

后端

要完成的几个接口

  1. 解析文本:利用马尔可夫链算法,对已有文本进行分词,统计频率

  2. 根据解析的文本,进行随机文本生成

  3. 将生成的文本返回给前端,在网页上进行输出

需要解决的一些问题

  1. 前后端的连接:可以用Django之类的框架,完成一个简单的项目应该不是很难
  2. 后端的机器人的实现,核心是实现一个马尔可夫链
  3. 可选的文本风格:英文文本-->中文文本(诗句、废话生成...)

任务分配:

  1. 前端和前后端相连,在后端没写好之前可以自己写个小demo

  2. 后端解析文本

  3. 后端生成文本

Owner
DysprosiumDy
DysprosiumDy
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