تخطي إلى التنقل الرئيسي تخطي إلى البحث تخطي إلى المحتوى الرئيسي

LEEP: A New Measure to Evaluate Transferability of Learned Representations

  • Cuong V. Nguyen
  • , Tal Hassner
  • , Matthias Seeger
  • , Cedric Archambeau

نتاج البحث: نشر في مجلةمقالة من مؤنمرمراجعة النظراء

ملخص

We introduce a new measure to evaluate the transferability of representations learned by classifiers. Our measure, the Log Expected Empirical Prediction (LEEP), is simple and easy to compute: when given a classifier trained on a source data set, it only requires running the target data set through this classifier once. We analyze the properties of LEEP theoretically and demonstrate its effectiveness empirically. Our analysis shows that LEEP can predict the performance and convergence speed of both transfer and meta-transfer learning methods, even for small or imbalanced data. Moreover, LEEP outperforms recently proposed transferability measures such as negative conditional entropy and H scores. Notably, when transferring from ImageNet to CIFAR100, LEEP can achieve up to 30% improvement compared to the best competing method in terms of the correlations with actual transfer accuracy.

اللغة الأصليةالإنجليزيّة
الصفحات (من إلى)7294-7305
عدد الصفحات12
دوريةProceedings of Machine Learning Research
مستوى الصوت119
حالة النشرنُشِر - 2020
منشور خارجيًانعم
الحدث37th International Conference on Machine Learning, ICML 2020 - Virtual, Online
المدة: ١٣ يوليو ٢٠٢٠١٨ يوليو ٢٠٢٠

ملاحظة ببليوغرافية

Publisher Copyright:
© 2020 by the author(s).

بصمة

أدرس بدقة موضوعات البحث “LEEP: A New Measure to Evaluate Transferability of Learned Representations'. فهما يشكلان معًا بصمة فريدة.

قم بذكر هذا