AICLNov 14, 2017

SkipFlow: Incorporating Neural Coherence Features for End-to-End Automatic Text Scoring

arXiv:1711.04981v1138 citations
Originality Incremental advance
AI Analysis

This work addresses automatic essay scoring for educational applications, presenting an incremental improvement over existing deep learning models.

The paper tackles the problem of automatic text scoring by enhancing neural networks with neural coherence features to improve performance on long essays, achieving state-of-the-art results on the ASAP benchmark dataset.

Deep learning has demonstrated tremendous potential for Automatic Text Scoring (ATS) tasks. In this paper, we describe a new neural architecture that enhances vanilla neural network models with auxiliary neural coherence features. Our new method proposes a new \textsc{SkipFlow} mechanism that models relationships between snapshots of the hidden representations of a long short-term memory (LSTM) network as it reads. Subsequently, the semantic relationships between multiple snapshots are used as auxiliary features for prediction. This has two main benefits. Firstly, essays are typically long sequences and therefore the memorization capability of the LSTM network may be insufficient. Implicit access to multiple snapshots can alleviate this problem by acting as a protection against vanishing gradients. The parameters of the \textsc{SkipFlow} mechanism also acts as an auxiliary memory. Secondly, modeling relationships between multiple positions allows our model to learn features that represent and approximate textual coherence. In our model, we call this \textit{neural coherence} features. Overall, we present a unified deep learning architecture that generates neural coherence features as it reads in an end-to-end fashion. Our approach demonstrates state-of-the-art performance on the benchmark ASAP dataset, outperforming not only feature engineering baselines but also other deep learning models.

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