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# ---> Python |
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# Byte-compiled / optimized / DLL files |
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__pycache__/ |
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*.py[cod] |
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*$py.class |
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|
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# C extensions |
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*.so |
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|
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# Distribution / packaging |
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.Python |
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build/ |
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develop-eggs/ |
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dist/ |
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downloads/ |
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eggs/ |
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.eggs/ |
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lib/ |
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lib64/ |
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parts/ |
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sdist/ |
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var/ |
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wheels/ |
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share/python-wheels/ |
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*.egg-info/ |
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.installed.cfg |
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*.egg |
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MANIFEST |
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|
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# PyInstaller |
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# Usually these files are written by a python script from a template |
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# before PyInstaller builds the exe, so as to inject date/other infos into it. |
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*.manifest |
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*.spec |
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|
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# Installer logs |
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pip-log.txt |
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pip-delete-this-directory.txt |
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|
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# Unit test / coverage reports |
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htmlcov/ |
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.tox/ |
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.nox/ |
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.coverage |
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.coverage.* |
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.cache |
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nosetests.xml |
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coverage.xml |
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*.cover |
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*.py,cover |
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.hypothesis/ |
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.pytest_cache/ |
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cover/ |
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|
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# Translations |
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*.mo |
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*.pot |
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|
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# Django stuff: |
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*.log |
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local_settings.py |
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db.sqlite3 |
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db.sqlite3-journal |
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|
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# Flask stuff: |
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instance/ |
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.webassets-cache |
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|
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# Scrapy stuff: |
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.scrapy |
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|
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# Sphinx documentation |
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docs/_build/ |
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|
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# PyBuilder |
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.pybuilder/ |
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target/ |
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|
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# Jupyter Notebook |
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.ipynb_checkpoints |
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|
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# IPython |
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profile_default/ |
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ipython_config.py |
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|
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# pyenv |
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# For a library or package, you might want to ignore these files since the code is |
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# intended to run in multiple environments; otherwise, check them in: |
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# .python-version |
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|
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# pipenv |
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# According to pypa/pipenv#598, it is recommended to include Pipfile.lock in version control. |
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# However, in case of collaboration, if having platform-specific dependencies or dependencies |
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# having no cross-platform support, pipenv may install dependencies that don't work, or not |
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# install all needed dependencies. |
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#Pipfile.lock |
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|
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# PEP 582; used by e.g. github.com/David-OConnor/pyflow |
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__pypackages__/ |
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|
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# Celery stuff |
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celerybeat-schedule |
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celerybeat.pid |
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|
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# SageMath parsed files |
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*.sage.py |
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|
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# Environments |
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.env |
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.venv |
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env/ |
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venv/ |
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ENV/ |
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env.bak/ |
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venv.bak/ |
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|
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# Spyder project settings |
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.spyderproject |
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.spyproject |
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|
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# Rope project settings |
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.ropeproject |
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|
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# mkdocs documentation |
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/site |
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|
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# mypy |
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.mypy_cache/ |
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.dmypy.json |
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dmypy.json |
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|
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# Pyre type checker |
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.pyre/ |
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|
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# pytype static type analyzer |
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.pytype/ |
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|
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# Cython debug symbols |
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cython_debug/ |
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|
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/chinese_roberta_wwm_ext_L-12_H-768_A-12/ |
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/data/ |
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/output_models/ |
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@ -0,0 +1,2 @@ |
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# drop_classify |
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@ -0,0 +1,674 @@ |
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{ |
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"矿业工程": [ |
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0, |
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-0.5 |
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], |
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"汽车工业": [ |
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1, |
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-1.3 |
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], |
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"哲学": [ |
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2, |
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-0.6 |
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], |
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"新能源": [ |
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3, |
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-3.8 |
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], |
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"机械工业": [ |
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4, |
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-2.5 |
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], |
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"贸易经济": [ |
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5, |
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-1.7 |
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], |
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"刑法": [ |
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6, |
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0 |
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], |
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"中国古代史": [ |
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7, |
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-2.9 |
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], |
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"投资": [ |
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8, |
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-1.5 |
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], |
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"肿瘤学": [ |
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9, |
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0 |
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], |
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"预防医学与卫生学": [ |
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10, |
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-2.4 |
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], |
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"水利水电工程": [ |
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11, |
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-1.5 |
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], |
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"中国近现代史": [ |
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12, |
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-2.5 |
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], |
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"中药学": [ |
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13, |
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-0.3 |
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], |
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"管理学": [ |
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14, |
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-5.5 |
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], |
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"公安": [ |
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15, |
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-2.0 |
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], |
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"国际法": [ |
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16, |
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-0.3 |
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], |
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"医药卫生方针政策与法律法规研究": [ |
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17, |
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-2.1 |
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], |
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"社会科学理论与方法": [ |
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18, |
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-11.4 |
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], |
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"高等教育": [ |
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19, |
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-0.4 |
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], |
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"经济统计": [ |
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20, |
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-7.4 |
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], |
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"天文学": [ |
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21, |
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-1.3 |
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], |
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"中国文学": [ |
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22, |
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0 |
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], |
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"史学理论": [ |
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23, |
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-3.7 |
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], |
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"燃料化工": [ |
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24, |
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-2.2 |
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], |
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"农作物": [ |
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25, |
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-0.0 |
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], |
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"军事医学与卫生": [ |
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26, |
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-2.8 |
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], |
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"行政法及地方法制": [ |
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27, |
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-0.9 |
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], |
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"无机化工": [ |
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28, |
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-1.9 |
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], |
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"社会学及统计学": [ |
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29, |
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-3.3 |
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], |
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"保险": [ |
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30, |
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0 |
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], |
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"金属学及金属工艺": [ |
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31, |
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-0.2 |
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], |
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"旅游": [ |
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32, |
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-1.6 |
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], |
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"仪器仪表工业": [ |
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33, |
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-3.0 |
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], |
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"中医学": [ |
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34, |
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0 |
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], |
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"领导学与决策学": [ |
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35, |
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-5.4 |
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], |
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"企业经济": [ |
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36, |
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-1.0 |
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], |
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"急救医学": [ |
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37, |
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-1.0 |
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], |
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"美术书法雕塑与摄影": [ |
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38, |
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0 |
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], |
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"自然地理学和测绘学": [ |
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39, |
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-2.9 |
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], |
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"园艺": [ |
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40, |
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-0.9 |
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], |
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"出版": [ |
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41, |
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-2.4 |
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], |
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"经济体制改革": [ |
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42, |
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-1.0 |
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], |
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"自动化技术": [ |
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43, |
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-1.9 |
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], |
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"神经病学": [ |
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44, |
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-0.1 |
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], |
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"海洋学": [ |
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45, |
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-2.3 |
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], |
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"人口学与计划生育": [ |
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46, |
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-0.4 |
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], |
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"轻工业手工业": [ |
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47, |
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-1.2 |
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], |
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"会计": [ |
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48, |
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-1.0 |
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], |
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"化学": [ |
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49, |
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-1.7 |
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], |
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"农业基础科学": [ |
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50, |
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-1.8 |
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], |
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"学前教育": [ |
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51, |
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0 |
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], |
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"中等教育": [ |
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52, |
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0 |
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], |
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"世界文学": [ |
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53, |
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0 |
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], |
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"中国语言文字": [ |
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54, |
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0 |
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], |
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"中国民族与地方史志": [ |
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55, |
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-3.1 |
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], |
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"新闻与传媒": [ |
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56, |
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-0.2 |
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], |
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"工业通用技术及设备": [ |
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57, |
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-3.4 |
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], |
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"文艺理论": [ |
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58, |
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-0.9 |
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], |
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"市场研究与信息": [ |
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59, |
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-2.9 |
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], |
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"呼吸系统疾病": [ |
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60, |
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-1.3 |
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], |
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"心血管系统疾病": [ |
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61, |
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-0.8 |
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], |
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"考古": [ |
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62, |
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-1.4 |
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], |
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"戏剧电影与电视艺术": [ |
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63, |
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0 |
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], |
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"畜牧与动物医学": [ |
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64, |
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0 |
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], |
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"体育": [ |
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65, |
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0 |
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], |
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"伦理学": [ |
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66, |
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-2.3 |
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], |
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"材料科学": [ |
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67, |
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-1.3 |
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], |
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"外科学": [ |
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68, |
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-0.6 |
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], |
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"民族学": [ |
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69, |
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-2.6 |
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], |
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"交通运输经济": [ |
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70, |
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-2.4 |
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], |
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"世界历史": [ |
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71, |
|||
-1.5 |
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], |
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"音乐舞蹈": [ |
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72, |
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0 |
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], |
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"铁路运输": [ |
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73, |
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-0.4 |
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], |
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"心理学": [ |
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74, |
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-0.5 |
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], |
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"诉讼法与司法制度": [ |
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75, |
|||
0 |
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], |
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"物理学": [ |
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76, |
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-3.3 |
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], |
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"初等教育": [ |
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77, |
|||
0 |
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], |
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"一般化学工业": [ |
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78, |
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-2.2 |
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], |
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"政党及群众组织": [ |
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79, |
|||
-1.9 |
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], |
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"自然科学理论与方法": [ |
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80, |
|||
-7.9 |
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], |
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"计算机软件及计算机应用": [ |
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81, |
|||
-1.8 |
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], |
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"蚕蜂与野生动物保护": [ |
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82, |
|||
-2.2 |
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], |
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"水产和渔业": [ |
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83, |
|||
-0.9 |
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], |
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"航空航天科学与工程": [ |
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84, |
|||
-1.1 |
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], |
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"内分泌腺及全身性疾病": [ |
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85, |
|||
-0.8 |
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], |
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"武器工业与军事技术": [ |
|||
86, |
|||
-2.7 |
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], |
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"无线电电子学": [ |
|||
87, |
|||
-2.8 |
|||
], |
|||
"临床医学": [ |
|||
88, |
|||
-2.1 |
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], |
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"资源科学": [ |
|||
89, |
|||
-1.3 |
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], |
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"经济理论及经济思想史": [ |
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90, |
|||
-2.9 |
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], |
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"民商法": [ |
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91, |
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0 |
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], |
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"服务业经济": [ |
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92, |
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-3.8 |
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], |
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"皮肤病与性病": [ |
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93, |
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-1.7 |
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], |
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"特种医学": [ |
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94, |
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-3.2 |
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], |
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"逻辑学": [ |
|||
95, |
|||
-3.3 |
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], |
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"工业经济": [ |
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96, |
|||
-0.9 |
|||
], |
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"数学": [ |
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97, |
|||
-3.9 |
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], |
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"宪法": [ |
|||
98, |
|||
-1.7 |
|||
], |
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"电力工业": [ |
|||
99, |
|||
-1.0 |
|||
], |
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"农艺学": [ |
|||
100, |
|||
-2.3 |
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], |
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"美学": [ |
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101, |
|||
-3.2 |
|||
], |
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"消化系统疾病": [ |
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102, |
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-0.2 |
|||
], |
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"军事": [ |
|||
103, |
|||
-2.6 |
|||
], |
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"感染性疾病及传染病": [ |
|||
104, |
|||
-1.1 |
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], |
|||
"公路与水路运输": [ |
|||
105, |
|||
-1.7 |
|||
], |
|||
"一般服务业": [ |
|||
106, |
|||
-3.7 |
|||
], |
|||
"动力工程": [ |
|||
107, |
|||
-3.2 |
|||
], |
|||
"计算机硬件技术": [ |
|||
108, |
|||
-3.0 |
|||
], |
|||
"核科学技术": [ |
|||
109, |
|||
-1.8 |
|||
], |
|||
"中国共产党": [ |
|||
110, |
|||
-0.9 |
|||
], |
|||
"成人教育与特殊教育": [ |
|||
111, |
|||
-2.1 |
|||
], |
|||
"船舶工业": [ |
|||
112, |
|||
-0.9 |
|||
], |
|||
"财政与税收": [ |
|||
113, |
|||
0 |
|||
], |
|||
"政治学": [ |
|||
114, |
|||
-3.5 |
|||
], |
|||
"农业经济": [ |
|||
115, |
|||
-0.4 |
|||
], |
|||
"审计": [ |
|||
116, |
|||
0 |
|||
], |
|||
"建筑科学与工程": [ |
|||
117, |
|||
-1.2 |
|||
], |
|||
"气象学": [ |
|||
118, |
|||
-1.4 |
|||
], |
|||
"教育理论与教育管理": [ |
|||
119, |
|||
-1.3 |
|||
], |
|||
"档案及博物馆": [ |
|||
120, |
|||
-0.9 |
|||
], |
|||
"环境科学与资源利用": [ |
|||
121, |
|||
-0.9 |
|||
], |
|||
"人才学与劳动科学": [ |
|||
122, |
|||
-1.9 |
|||
], |
|||
"植物保护": [ |
|||
123, |
|||
-0.8 |
|||
], |
|||
"中西医结合": [ |
|||
124, |
|||
-3.1 |
|||
], |
|||
"互联网技术": [ |
|||
125, |
|||
-2.0 |
|||
], |
|||
"药学": [ |
|||
126, |
|||
-2.2 |
|||
], |
|||
"思想政治教育": [ |
|||
127, |
|||
-3.2 |
|||
], |
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"儿科学": [ |
|||
128, |
|||
0 |
|||
], |
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"生物医学工程": [ |
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129, |
|||
-3.1 |
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], |
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"经济法": [ |
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130, |
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-0.5 |
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], |
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"法理、法史": [ |
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131, |
|||
-2.4 |
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], |
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"口腔科学": [ |
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132, |
|||
0 |
|||
], |
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"行政学及国家行政管理": [ |
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133, |
|||
-2.8 |
|||
], |
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"地质学": [ |
|||
134, |
|||
-0.3 |
|||
], |
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"非线性科学与系统科学": [ |
|||
135, |
|||
-5.0 |
|||
], |
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"宏观经济管理与可持续发展": [ |
|||
136, |
|||
-2.2 |
|||
], |
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"宗教": [ |
|||
137, |
|||
-1.8 |
|||
], |
|||
"精神病学": [ |
|||
138, |
|||
-1.5 |
|||
], |
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"眼科与耳鼻咽喉科": [ |
|||
139, |
|||
0 |
|||
], |
|||
"生物学": [ |
|||
140, |
|||
-2.5 |
|||
], |
|||
"外国语言文字": [ |
|||
141, |
|||
0 |
|||
], |
|||
"农业工程": [ |
|||
142, |
|||
-1.8 |
|||
], |
|||
"安全科学与灾害防治": [ |
|||
143, |
|||
-2.7 |
|||
], |
|||
"图书情报与数字图书馆": [ |
|||
144, |
|||
-2.6 |
|||
], |
|||
"泌尿科学": [ |
|||
145, |
|||
-0.6 |
|||
], |
|||
"力学": [ |
|||
146, |
|||
-4.7 |
|||
], |
|||
"文化": [ |
|||
147, |
|||
-2.0 |
|||
], |
|||
"地理": [ |
|||
148, |
|||
-5.9 |
|||
], |
|||
"中国通史": [ |
|||
149, |
|||
-5.7 |
|||
], |
|||
"妇产科学": [ |
|||
150, |
|||
0 |
|||
], |
|||
"信息经济与邮政经济": [ |
|||
151, |
|||
-2.1 |
|||
], |
|||
"金融": [ |
|||
152, |
|||
-0.3 |
|||
], |
|||
"医学教育与医学边缘学科": [ |
|||
153, |
|||
-2.1 |
|||
], |
|||
"文化经济": [ |
|||
154, |
|||
-2.5 |
|||
], |
|||
"基础医学": [ |
|||
155, |
|||
-3.7 |
|||
], |
|||
"职业教育": [ |
|||
156, |
|||
0 |
|||
], |
|||
"地球物理学": [ |
|||
157, |
|||
-2.2 |
|||
], |
|||
"林业": [ |
|||
158, |
|||
-0.7 |
|||
], |
|||
"石油天然气工业": [ |
|||
159, |
|||
-0.4 |
|||
], |
|||
"马克思主义": [ |
|||
160, |
|||
-1.6 |
|||
], |
|||
"中国政治与国际政治": [ |
|||
161, |
|||
-2.7 |
|||
], |
|||
"电信技术": [ |
|||
162, |
|||
-1.0 |
|||
], |
|||
"冶金工业": [ |
|||
163, |
|||
-2.0 |
|||
], |
|||
"有机化工": [ |
|||
164, |
|||
-2.0 |
|||
], |
|||
"科学研究管理": [ |
|||
165, |
|||
-2.9 |
|||
], |
|||
"证券": [ |
|||
166, |
|||
-0.9 |
|||
], |
|||
"人物传记": [ |
|||
167, |
|||
-5.9 |
|||
] |
|||
} |
@ -0,0 +1,105 @@ |
|||
# -*- coding:utf-8 -*- |
|||
|
|||
import os |
|||
os.environ["CUDA_VISIBLE_DEVICES"] = "1" |
|||
import json |
|||
import random |
|||
import keras |
|||
import numpy as np |
|||
import pandas as pd |
|||
from bert4keras.backend import multilabel_categorical_crossentropy |
|||
from bert4keras.models import build_transformer_model |
|||
from bert4keras.optimizers import Adam |
|||
from bert4keras.snippets import DataGenerator, sequence_padding |
|||
from keras.layers import Lambda, Dense |
|||
from keras.models import Model |
|||
from bert4keras.tokenizers import Tokenizer |
|||
from tqdm import tqdm |
|||
|
|||
import tensorflow as tf |
|||
from keras.backend import set_session |
|||
config = tf.ConfigProto() |
|||
config.gpu_options.allow_growth = True |
|||
set_session(tf.Session(config=config)) # 此处不同 |
|||
|
|||
config_path = 'chinese_roformer-v2-char_L-12_H-768_A-12/bert_config.json' |
|||
checkpoint_path = 'chinese_roformer-v2-char_L-12_H-768_A-12/bert_model.ckpt' |
|||
dict_path = 'chinese_roformer-v2-char_L-12_H-768_A-12/vocab.txt' |
|||
|
|||
|
|||
class_nums = 168 |
|||
batch_size = 16 |
|||
max_len = 512 |
|||
|
|||
config_lable = './config_json/label_threshold.json' |
|||
weight_path = './output_models/best_model.weights' |
|||
|
|||
|
|||
tokenizer = Tokenizer(token_dict=dict_path) |
|||
|
|||
roformer = build_transformer_model( |
|||
config_path=config_path, |
|||
checkpoint_path=checkpoint_path, |
|||
model='roformer_v2', |
|||
return_keras_model=False |
|||
) |
|||
|
|||
output = Lambda(lambda x: x[:, 0])(roformer.model.output) |
|||
|
|||
output = Dense( |
|||
units=class_nums, |
|||
kernel_initializer=roformer.initializer |
|||
)(output) |
|||
|
|||
model = Model(roformer.model.input, output) |
|||
model.load_weights(weight_path) |
|||
model.summary() |
|||
|
|||
|
|||
def load_label1(): |
|||
with open(config_lable, 'r', |
|||
encoding='utf-8') as f: |
|||
labels_dict = json.load(f) |
|||
|
|||
id2label1 = {j[0]: i for i, j in labels_dict.items()} |
|||
label2id1 = {i: j[0] for i, j in labels_dict.items()} |
|||
label_threshold1 = np.array([j[1] for i, j in labels_dict.items()]) |
|||
|
|||
return id2label1, label2id1, label_threshold1 |
|||
|
|||
id2label, label2id, label_threshold = load_label1() |
|||
|
|||
def predict(text): |
|||
text = text[0] |
|||
sent_token_id, sent_segment_id = [], [] |
|||
token_ids, segment_ids = tokenizer.encode(text, maxlen=max_len) |
|||
y_pred = model.predict([[token_ids], [segment_ids]]) |
|||
idx = np.where(y_pred[0] > label_threshold, 1, 0) |
|||
label_pre = [] |
|||
for i in range(len(idx)): |
|||
if idx[i] == 1: |
|||
label_pre.append(id2label[i]) |
|||
return label_pre |
|||
|
|||
|
|||
if __name__ == '__main__': |
|||
# text_list = ["你你你你你你你你你你你你你你你你你你你你你你你你你你你你你你你你你你你你你你你你你"] |
|||
# y_pred = predict(text_list) |
|||
# idx = np.where(y_pred[0] > label_threshold, 1, 0) |
|||
# label_pre = [] |
|||
# for i in range(len(idx)): |
|||
# if idx[i] == 1: |
|||
# label_pre.append(id2label[i]) |
|||
# print(label_pre) |
|||
|
|||
#+++++++++++++++++++++++++++++++++++++++++++++++++++++++++++++++++++++++++++++++++++++++++++++++++++ |
|||
data = pd.read_csv("data/yy改写相似度.csv").values.tolist() |
|||
|
|||
data_new = [] |
|||
for data_dan in tqdm(data): |
|||
label_pre = predict([data_dan[0]]) |
|||
label_pre = ",".join(label_pre) |
|||
data_new.append(data_dan + [label_pre]) |
|||
df = pd.DataFrame(data_new) |
|||
print(df) |
|||
df.to_csv("./data/yy改写相似度含文章类别.csv", index=None) |
Loading…
Reference in new issue