Corpus ID: 56895317

Improving Context-Aware Semantic Relationships in Sparse Mobile Datasets

@article{Hansel2018ImprovingCS,
  title={Improving Context-Aware Semantic Relationships in Sparse Mobile Datasets},
  author={Peter Hansel and Nik Marda and William Yin},
  journal={ArXiv},
  year={2018},
  volume={abs/1812.09650}
}
  • Peter Hansel, Nik Marda, William Yin
  • Published 2018
  • Computer Science, Mathematics
  • ArXiv
  • Traditional semantic similarity models often fail to encapsulate the external context in which texts are situated. However, textual datasets generated on mobile platforms can help us build a truer representation of semantic similarity by introducing multimodal data. This is especially important in sparse datasets, making solely text-driven interpretation of context more difficult. In this paper, we develop new algorithms for building external features into sentence embeddings and semantic… CONTINUE READING

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