结巴分词与ltp分词算法的比较:对于新词的识别ltp分词方法远高于结巴分词

from pyltp import Segmentor
import jieba

model_path = "E:/ltp3_4/cws.model"
content = "我毕业于清华大学,我朋友的名字叫戴掵莉,我哥们的名字叫付先军;阿尔艾斯是我的村庄名字"

seg = Segmentor()
seg.load(model_path) # 加载语言模型 用于分词
words = seg.segment(content)
seg_words = " ".join(words)
print("LTP: ", " /".join(words))
jiebaWords = jieba.cut(content, HMM=True)
print("jieba: ", " /".join(jiebaWords))
print(seg_words)

# 词性标注
from pyltp import Postagger

pos = Postagger()
model_path = "E:/ltp3_4/pos.model"

pos.load(model_path) # 导入词性标注模型
pos_words = pos.postag(seg_words.split(" "))
for word, pt in zip(seg_words.split(" "), pos_words):
    print(word + "/" + pt)

""" 
从分词结果上来看,对于新词的识别ltp分词方法远高于结巴分词
"""

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转载自blog.csdn.net/qq_29676179/article/details/86677760
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