Context is Key: New Approaches to Neural Coherence Modeling
We formulate coherence modeling as a regression task and propose two novel methods to combine techniques from our setup with pairwise approaches. The first of our methods is a model that we call "first-next," which operates similarly to selection sorting but conditions decision-making on i...
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Zusammenfassung: | We formulate coherence modeling as a regression task and propose two novel
methods to combine techniques from our setup with pairwise approaches. The
first of our methods is a model that we call "first-next," which operates
similarly to selection sorting but conditions decision-making on information
about already-sorted sentences. The second consists of a technique for adding
context to regression-based models by concatenating sentence-level
representations with an encoding of its corresponding out-of-order paragraph.
This latter model achieves Kendall-tau distance and positional accuracy scores
that match or exceed the current state-of-the-art on these metrics. Our results
suggest that many of the gains that come from more complex, machine-translation
inspired approaches can be achieved with simpler, more efficient models. |
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DOI: | 10.48550/arxiv.1812.04722 |