2006 EfficientInferenceOnSeqSegModels
- (Sarawagi, 2006) ⇒ Sunita Sarawagi. (2006). “Efficient Inference on Sequence Segmentation Models.” In: Proceedings of the 23rd International Conference on Machine Learning (ICML 2006). doi:10.1145/1143844.1143944
Subject Headings: Sequence Segmentation Statistical Models, Statistical Model Inference Task.
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Abstract
Sequence segmentation is a flexible and highly accurate mechanism for modeling several applications. Inference on segmentation models involves dynamic programming computations that in the worst case can be cubic in the length of a sequence. In contrast, typical sequence labeling models require linear time. We remove this limitation of segmentation models vis-a-vis sequential models by designing a succinct representation of potentials common across overlapping segments. We exploit such potentials to design efficient inference algorithms that are both analytically shown to have a lower complexity and empirically found to be comparable to sequential models for typical extraction tasks.
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Author | volume | Date Value | title | type | journal | titleUrl | doi | note | year | |
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2006 EfficientInferenceOnSeqSegModels | Sunita Sarawagi | Efficient Inference on Sequence Segmentation Models | ICML 2006 | http://www.it.iitb.ac.in/~sunita/papers/icml06.pdf | 10.1145/1143844.1143944 | 2006 |