विधियों की तुलना करें
चुनी हुई विधियों की आमने-सामने समीक्षा करें; भिन्नता वाली पंक्तियाँ रेखांकित हैं।
| नियमितीकृत स्थानांतरण अधिगम× | नियमितीकृत यादृच्छिक वन× | |
|---|---|---|
| क्षेत्र | मशीन अधिगम | मशीन अधिगम |
| परिवार | Machine learning | Machine learning |
| उद्भव वर्ष≠ | 2000s–2010s | 2012 |
| प्रवर्तक≠ | Pan, S. J. & Yang, Q. (survey); regularization variants by multiple authors | Deng, H. & Runger, G. |
| प्रकार≠ | Regularized supervised/semi-supervised learning framework | Regularized ensemble (penalized feature selection in trees) |
| मौलिक स्रोत≠ | Pan, S. J., & Yang, Q. (2010). A survey on transfer learning. IEEE Transactions on Knowledge and Data Engineering, 22(10), 1345–1359. DOI ↗ | Deng, H., & Runger, G. (2012). Feature selection via regularized trees. Proceedings of the 2012 International Joint Conference on Neural Networks (IJCNN), IEEE, pp. 1–8. DOI ↗ |
| उपनाम | regularized domain adaptation, transfer learning with regularization, penalized transfer learning, regularized fine-tuning | RRF, Guided Regularized Random Forest, GRRF, regularized tree ensemble |
| संबंधित≠ | 6 | 5 |
| सारांश≠ | Regularized Transfer Learning applies explicit penalty terms to a transfer learning pipeline to control how much a model shifts away from source-domain knowledge when adapting to a new target domain. The regularizer discourages negative transfer — the harmful carry-over of irrelevant source patterns — while preserving beneficial shared representations and preventing overfitting when target-domain labels are scarce. | Regularized Random Forest (RRF), introduced by Deng and Runger in 2012, extends the standard Random Forest by adding a penalty that discourages splits on features not already used in the ensemble. This built-in regularization produces sparser, less redundant feature subsets, making the model especially valuable when feature selection is as important as predictive accuracy. |
| ScholarGateडेटासेट ↗ |
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