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Harry Potter and the Action Prediction Challenge from Natural Language

机译:哈利波特和自然语言的动作预测挑战

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We explore the challenge of action prediction from textual descriptions of scenes, a testbed to approximate whether text inference can be used to predict upcoming actions. As a case of study, we consider the world of the Harry Potter fantasy novels and inferring what spell will be cast next given a fragment of a story. Spells act as keywords that abstract actions (e.g. 'Alohomora' to open a door) and denote a response to the environment. This idea is used to automatically build HPAC, a corpus containing 82 836 samples and 85 actions. We then evaluate different baselines. Among the tested models, an LSTM-based approach obtains the best performance for frequent actions and large scene descriptions, but approaches such as logistic regression behave well on infrequent actions.
机译:我们探讨了从幕府的文本描述中的动作预测的挑战,近似文本推断是否可以用于预测即将到来的动作。作为一项研究的情况,我们认为哈利波特幻想小说的世界和推断出在一个故事的片段之后将施放的咒语。法术充当抽象动作的关键字(例如'Alohomora'开门)并表示对环境的反应。此想法用于自动构建HPAC,其中包含82个836个样本和85个操作的语料库。然后我们评估不同的基线。在测试模型中,基于LSTM的方法获得了频繁的动作和大场景描述的最佳性能,但逻辑回归等方法在不常见的行动中表现得很好。

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