We present HyperSeg, a hyperdimensional computing (HDC) approach to unsupervised dialogue topic segmentation. HDC is a class of vector symbolic architectures that leverages the probabilistic orthogonality of randomly drawn vectors at extremely high dimensions (typically over 10,000). HDC generates rich token representations through its low-cost initialization of many unrelated vectors. This is especially beneficial in topic segmentation, which often operates as a resource-constrained pre-processing step for downstream transcript understanding tasks. HyperSeg outperforms the current state-of-the-art in 4 out of 5 segmentation benchmarks -- even when baselines are given partial access to the ground truth -- and is 10 times faster on average. We show that HyperSeg also improves downstream summarization accuracy. With HyperSeg, we demonstrate the viability of HDC in a major language task. We open-source HyperSeg to provide a strong baseline for unsupervised topic segmentation.
Unsupervised Dialogue Topic Segmentation in Hyperdimensional Space
HyperSeg, a hyperdimensional computing approach, outperforms existing methods in unsupervised dialogue topic segmentation and enhances downstream summarization accuracy.
- Year
- 2023
- Venue
- arXiv 2023
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- 3
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- arxiv.org/abs/2308.10464ARXIV-DEFAULT
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