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An empirical investigation of neural methods for content scoring of science explanations

机译:科学解释内容评分神经方法的实证研究

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With the widespread adoption of the Next Generation Science Standards (NGSS), science teachers and online learning environments face the challenge of evaluating students' integration of different dimensions of science learning. Recent advances in representation learning in natural language processing have proven effective across many natural language processing tasks, but a rigorous evaluation of the relative merits of these methods for scoring complex constructed response formative assessments has not previously been carried out. We present a detailed empirical investigation of feature-based, recurrent neural network, and pre-trained transformer models on scoring content in real-world formative assessment data. We demonstrate that recent neural methods can rival or exceed the performance of feature-based methods. We also provide evidence that different classes of neural models take advantage of different learning cues, and pre-trained transformer models may be more robust to spurious, dataset-specific learning cues, better reflecting scoring rubrics.
机译:随着下一代科学标准(NGSS)的广泛采用,科学教师和在线学习环境面临评估学生对科学学习不同方面的融合的挑战。在许多自然语言处理任务中证明了自然语言处理中的近期代表学习的进展,但先前尚未进行对这些评分复杂构建的反应形成性评估的这些方法的相对优点进行严格评估。我们对基于特征的,经常性的神经网络和预先接受的变压器模型提供了详细的实证调查,在实际形成性评估数据中评分内容进行评分内容。我们证明最近的神经方法可以竞争或超过基于特征的方法的性能。我们还提供了证据表明,不同类的神经模型利用不同的学习线索,预先接受的变压器模型对于虚假,数据集特定的学习线索可能更加强大,更好地反映得分尺寸。

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