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A Genre-Aware Attention Model to Improve the Likability Prediction of Books

机译:一种改善书籍可爱预测的流派感知的注意模型

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摘要

Likability prediction of books has many uses. Readers, writers, as well as the publishing industry, can all benefit from automatic book likability prediction systems. In order to make reliable decisions, these systems need to assimilate information from different aspects of a book in a sensible way. We propose a novel multimodal neural architecture that incorporates genre supervision to assign weights to individual feature types. Our proposed method is capable of dynamically tailoring weights given to feature types based on the characteristics of each book. Our architecture achieves competitive results and even outperforms state-of-the-art for this task.
机译:书籍的可爱预测有很多用途。读者,作家以及出版业都可以从自动书籍可爱预测系统中获益。为了做出可靠的决策,这些系统需要以明智的方式吸收来自书籍的不同方面的信息。我们提出了一种新颖的多模式神经结构,它包含类型监督,将权重分配给各个特征类型。我们所提出的方法能够根据每本书的特征动态定制给特征类型的重量。我们的建筑实现了竞争结果,甚至优于此任务的最先进。

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