Natural Language Toolkit (NLTK) nltk.org
Authors: Steven Bird <stevenbird1@gmail.com>
Edward Loper <edloper@gmail.com>
Ewan Klein <ewan@inf.ed.ac.uk>
Copyright (C) 2001-2015 NLTK Project
For license information, see LICENSE.txt
NLTK -- the Natural Language Toolkit -- is a suite of open source
Python modules, data sets and tutorials supporting research and
development in Natural Language Processing.
Documentation: A substantial amount of documentation about how
to use NLTK, including a textbook and API documentation, is
available from the NLTK website: http://nltk.org/
- The book covers a wide range of introductory topics in NLP, and
shows how to do all the processing tasks using the toolkit.
- The toolkit's reference documentation describes every module,
interface, class, method, function, and variable in the toolkit.
This documentation should be useful to both users and developers.
Mailing Lists: There are several mailing lists associated with NLTK:
- nltk: Public information and announcements about NLTK (very low volume)
http://groups.google.com/group/nltk
- nltk-users: Discussions amongst NLTK users
http://groups.google.com/group/nltk-users
- nltk-dev: Discussions amongst NLTK developers
http://groups.google.com/group/nltk-dev
- nltk-translation: Discussions about translating the NLTK book
http://groups.google.com/group/nltk-translation
- nltk-commits: Subversion commit logs for NLTK
http://groups.google.com/group/nltk-commits
Contributing: If you would like to contribute to NLTK,
please see http://nltk.org/contribute
Donating: Have you found the toolkit helpful? Please support NLTK development
by donating to the project via PayPal, using the link on the NLTK homepage.
Redistributing: NLTK source code is distributed under the Apache 2.0 License.
NLTK documentation is distributed under the Creative Commons
Attribution-Noncommercial-No Derivative Works 3.0 United States license.
NLTK corpora are provided under the terms given in the README file
for each corpus; all are redistributable, and available for non-commercial use.
NLTK may be freely redistributed, subject to the provisions of these licenses.
Citing: If you publish work that uses NLTK, please cite the NLTK book, as follows:
Bird, Steven, Edward Loper and Ewan Klein (2009).
Natural Language Processing with Python. O'Reilly Media Inc.
没有合适的资源?快使用搜索试试~ 我知道了~
nltk-3.0.4.tar.gz
需积分: 1 0 下载量 174 浏览量
2024-03-06
12:53:23
上传
评论
收藏 990KB GZ 举报
温馨提示
共327个文件
py:261个
doctest:54个
txt:6个
Python库是一组预先编写的代码模块,旨在帮助开发者实现特定的编程任务,无需从零开始编写代码。这些库可以包括各种功能,如数学运算、文件操作、数据分析和网络编程等。Python社区提供了大量的第三方库,如NumPy、Pandas和Requests,极大地丰富了Python的应用领域,从数据科学到Web开发。Python库的丰富性是Python成为最受欢迎的编程语言之一的关键原因之一。这些库不仅为初学者提供了快速入门的途径,而且为经验丰富的开发者提供了强大的工具,以高效率、高质量地完成复杂任务。例如,Matplotlib和Seaborn库在数据可视化领域内非常受欢迎,它们提供了广泛的工具和技术,可以创建高度定制化的图表和图形,帮助数据科学家和分析师在数据探索和结果展示中更有效地传达信息。
资源推荐
资源详情
资源评论
收起资源包目录
nltk-3.0.4.tar.gz (327个子文件)
setup.cfg 59B
corpus.doctest 82KB
tree.doctest 39KB
featstruct.doctest 37KB
logic.doctest 33KB
parse.doctest 31KB
featgram.doctest 28KB
semantics.doctest 24KB
portuguese_en.doctest 22KB
ccg.doctest 20KB
wordnet.doctest 20KB
drt.doctest 19KB
inference.doctest 17KB
discourse.doctest 17KB
data.doctest 14KB
gluesemantics.doctest 12KB
collocations.doctest 11KB
chunk.doctest 11KB
toolbox.doctest 10KB
nonmonotonic.doctest 10KB
relextract.doctest 9KB
metrics.doctest 9KB
framenet.doctest 9KB
childes.doctest 9KB
chat80.doctest 8KB
treeprettyprinter.doctest 8KB
resolution.doctest 8KB
probability.doctest 7KB
align.doctest 7KB
classify.doctest 7KB
propbank.doctest 7KB
gensim.doctest 5KB
tokenize.doctest 5KB
dependency.doctest 5KB
treetransforms.doctest 5KB
compat.doctest 4KB
internals.doctest 4KB
misc.doctest 3KB
grammartestsuites.doctest 3KB
wsd.doctest 3KB
index.doctest 3KB
gluesemantics_malt.doctest 2KB
simple.doctest 2KB
wordnet_lch.doctest 2KB
stem.doctest 2KB
crubadan.doctest 2KB
bnc.doctest 2KB
generate.doctest 2KB
grammar.doctest 1KB
paice.doctest 1KB
util.doctest 1KB
japanese.doctest 1KB
sentiwordnet.doctest 954B
tag.doctest 733B
bleu.doctest 292B
MANIFEST.in 172B
not-zip-safe 1B
PKG-INFO 2KB
PKG-INFO 2KB
snowball.py 143KB
featstruct.py 100KB
downloader.py 90KB
util.py 85KB
chartparser_app.py 84KB
probability.py 82KB
framenet.py 81KB
wordnet.py 73KB
logic.py 67KB
tree.py 63KB
chart.py 60KB
punkt.py 60KB
maxent.py 58KB
chunkparser_app.py 54KB
regexp.py 53KB
grammar.py 52KB
data.py 52KB
drt.py 49KB
boxer.py 48KB
hmm.py 48KB
table.py 43KB
util.py 38KB
tgrep.py 38KB
tree.py 36KB
internals.py 35KB
rdparser_app.py 35KB
wordnet_app.py 34KB
srparser_app.py 32KB
transitionparser.py 31KB
test_tgrep.py 30KB
util.py 30KB
cfg.py 29KB
nonprojectivedependencyparser.py 29KB
sequential.py 28KB
dependencygraph.py 28KB
glue.py 27KB
brill_trainer.py 27KB
chat80.py 25KB
resolution.py 25KB
tableau.py 25KB
evaluate.py 25KB
共 327 条
- 1
- 2
- 3
- 4
资源评论
程序员Chino的日记
- 粉丝: 3028
- 资源: 4万+
上传资源 快速赚钱
- 我的内容管理 展开
- 我的资源 快来上传第一个资源
- 我的收益 登录查看自己的收益
- 我的积分 登录查看自己的积分
- 我的C币 登录后查看C币余额
- 我的收藏
- 我的下载
- 下载帮助
最新资源
- 【后端开发框架】基于PHP的产品报价系统的设计与开发
- 基于C#开发的OPCServer与PLC连接程序+源码
- 三个后端开发项目-基于springboot-内容管理和秒杀系统.zip
- redis-win-2.8.9,redis-win-2.8.9
- 基于django+front+mysql的用户信息管理系统
- Servlet和JDBC实现三层架构
- Appium-Inspector-2024.6.1-win
- Screenshot_2024-06-14-21-22-39-202_net.csdn.csdnplus.jpg
- Appium-Server-GUI-windows-1.22.3-4
- 基于C语言+python实现的永磁同步电机矢量控制算法仿真+源码(毕业设计&课程设计&项目开发)
资源上传下载、课程学习等过程中有任何疑问或建议,欢迎提出宝贵意见哦~我们会及时处理!
点击此处反馈
安全验证
文档复制为VIP权益,开通VIP直接复制
信息提交成功