Collective Entity Resolution with Multi-Focal Attention

Globerson, Amir ; Lazic, Nevena ; Chakrabarti, Soumen ; Subramanya, Amarnag ; Ringaard, Michael ; Pereira, Fernando (2016) Collective Entity Resolution with Multi-Focal Attention In: Twenty-Sixth International Joint Conference on Artificial Intelligence.

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Official URL: http://doi.org/10.18653/v1/P16-1059

Related URL: http://dx.doi.org/10.18653/v1/P16-1059

Abstract

Automatic short answer grading (ASAG) can reduce tedium for instructors, but is complicated by free-form student inputs. An important ASAG task is to assign ordinal scores to student answers, given some “model” or ideal answers. Here we introduce a novel framework for ASAG by cascading three neural building blocks: Siamese bidirectional LSTMs applied to a model and a student answer, a novel pooling layer based on earth-mover distance (EMD) across all hidden states from both LSTMs, and a flexible final regression layer to output scores. On standard ASAG data sets, our system shows substantial reduction in grade estimation error compared to competitive baselines. We demonstrate that EMD pooling results in substantial accuracy gains, and that a support vector ordinal regression (SVOR) output layer helps outperform softmax. Our system also outperforms recent attention mechanisms on LSTM states.

Item Type:Conference or Workshop Item (Paper)
ID Code:130929
Deposited On:01 Dec 2022 09:07
Last Modified:27 Jan 2023 09:43

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