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D2U: Distance-to-Uniform Learning for Out-of-Scope Detection
Date
2022-01-01
Author
Yilmaz, Eyup Halit
Toraman, Çağrı
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Supervised training with cross-entropy loss implicitly forces models to produce probability distributions that follow a discrete delta distribution. Model predictions in test time are expected to be similar to delta distributions if the classifier determines the class of an input correctly. However, the shape of the predicted probability distribution can become similar to the uniform distribution when the model cannot infer properly. We exploit this observation for detecting out-of-scope (OOS) utterances in conversational systems. Specifically, we propose a zero-shot post-processing step, called Distance-to-Uniform (D2U), exploiting not only the classification confidence score, but the shape of the entire output distribution. We later combine it with a learning procedure that uses D2U for loss calculation in the supervised setup. We conduct experiments using six publicly available datasets. Experimental results show that the performance of OOS detection is improved with our post-processing when there is no OOS training data, as well as with D2U learning procedure when OOS training data is available.
URI
https://hdl.handle.net/11511/109609
Conference Name
Conference of the North-American-Chapter-of-the-Association-for-Computational-Linguistics (NAAACL) - Human Language Technologies
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Department of Computer Engineering, Conference / Seminar
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E. H. Yilmaz and Ç. Toraman, “D2U: Distance-to-Uniform Learning for Out-of-Scope Detection,” presented at the Conference of the North-American-Chapter-of-the-Association-for-Computational-Linguistics (NAAACL) - Human Language Technologies, Washington, Amerika Birleşik Devletleri, 2022, Accessed: 00, 2024. [Online]. Available: https://hdl.handle.net/11511/109609.