TopicEq: A Joint Topic and Mathematical Equation Model for Scientific Texts

16 Feb 2019  ·  Michihiro Yasunaga, John Lafferty ·

Scientific documents rely on both mathematics and text to communicate ideas. Inspired by the topical correspondence between mathematical equations and word contexts observed in scientific texts, we propose a novel topic model that jointly generates mathematical equations and their surrounding text (TopicEq). Using an extension of the correlated topic model, the context is generated from a mixture of latent topics, and the equation is generated by an RNN that depends on the latent topic activations. To experiment with this model, we create a corpus of 400K equation-context pairs extracted from a range of scientific articles from arXiv, and fit the model using a variational autoencoder approach. Experimental results show that this joint model significantly outperforms existing topic models and equation models for scientific texts. Moreover, we qualitatively show that the model effectively captures the relationship between topics and mathematics, enabling novel applications such as topic-aware equation generation, equation topic inference, and topic-aware alignment of mathematical symbols and words.

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 Ranked #1 on Topic Models on Arxiv HEP-TH citation graph (Topic Coherence@50 metric)

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Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Topic Models Arxiv HEP-TH citation graph TopicEq Topic Coherence@50 0.097 # 1

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