首页 > 其他 > 详细

fasttext模型 训练THUCNews

时间:2018-04-13 19:49:12      阅读:408      评论:0      收藏:0      [点我收藏+]
# _*_coding:utf-8 _*_
import fasttext
import jieba
from sklearn import metrics
import random
def read_file(filename):
    i=0;
    sentences =[]
    out = open(data/cnews/fast_test.txt,a+)
    with open(filename) as ft:
        for line in ft:
            label, content = line.strip().split(\t)
            segs = jieba.cut(content)
            segs = filter(lambda x:len(x)>1,segs)
            sentences.append("__label__"+str(label)+"\t"+" ".join(segs))
        random.shuffle(sentences)
        for sentence in sentences:
            out.write(sentence+"\n")
    out.close()
read_file(data/cnews/cnews.train.txt)
classifier = fasttext.supervised(data/cnews/fast_train.txt,new_fasttext.model)
classifier = fasttext.load_model(new_fasttext.model.bin)
categories = [体育,  财经,房产,家居,教育, 科技, 时尚, 时政, 游戏, 娱乐]
read_file(data/cnews/cnews.test.txt)
result = classifier.test(data/cnews/fast_test.txt)
print("准确率为:%f"%result.precision)
print("召回率为: %f"%result.recall)
with open(data/cnews/cnews.test.txt) as fw:
    contents,labels = [],[]
    for line in fw:
        label ,content = line.strip().split(\t)
        segs = jieba.cut(content)
        segs = filter(lambda x:len(x)>1,segs)
        contents.append(" ".join(segs))
        labels.append(__label__+label)
    label_predict = [e[0] for e in classifier.predict(contents)]
    print("Precision,Recall and F1-Score....")
    print(metrics.classification_report(labels,label_predict,target_names=categories))

关于fasttext的使用一些疑问:fasttext.supervised的参数label_prefix 一直提示我这个参数使用有问题... 然而,搜素了半天,我也没搞明白这个参数哪里有问题

还有一点需要注意的地方:fasttext的识别标签统一需要在标签前面加上"__label__"

后续会更新fastext的原理

 

fasttext模型 训练THUCNews

原文:https://www.cnblogs.com/jzcbest1016/p/8822890.html

(0)
(0)
   
举报
评论 一句话评论(0
关于我们 - 联系我们 - 留言反馈 - 联系我们:wmxa8@hotmail.com
© 2014 bubuko.com 版权所有
打开技术之扣,分享程序人生!