artificial-adversary
Text adversary library
A tool to generate adversarial text examples and test machine learning models against them
🗣️ Tool to generate adversarial text examples and test machine learning models against them
399 stars
18 watching
57 forks
Language: Python
last commit: about 3 years ago
Linked from 1 awesome list
adversarial-examplesblack-box-attacksblack-box-benchmarkingclassificationdata-miningdata-sciencemachine-learningmetricspythonpython2python3spamspam-classificationspam-detectionspam-filteringtexttext-analysistext-classificationtext-miningtext-processing
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