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Seeds: Sampling-Enhanced Embeddings.

Ning Gong, Nianmin Yao, Shun Guo

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    |October 20, 2020
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    This study introduces Seeds, a new framework for static word embeddings that improves upon negative sampling (NS) estimators. The proposed models, CBOW-GP, SG-GP, CBOW-GN, and SG-GN, demonstrate superior performance in various natural language processing tasks.

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    Area of Science:

    • Natural Language Processing
    • Machine Learning
    • Computational Linguistics

    Background:

    • Static word embedding models like continue-bag-of-words (CBOW) and skip gram (SG) are cost-effective and interpretable alternatives to large pretrained models.
    • Despite advances in dynamic models (e.g., BERT), static models remain crucial for many downstream applications.
    • Negative sampling (NS) is a key component in sampling-based static word embedding models, but its core has critical problems.

    Purpose of the Study:

    • To investigate and mitigate critical problems within the negative sampling (NS) core of static word embedding models.
    • To propose a novel algorithmic innovation for learning static word embeddings that enhances the sampling estimator.
    • To introduce the Seeds framework, which dynamically considers multifactor global priors for different training pairs.

    Main Methods:

    • Developed the Seeds framework, a sampling-enhanced embedding approach.
    • Implemented four concrete models: CBOW-GP, SG-GP (sampling negative words and positive auxiliaries), and CBOW-GN, SG-GN (sampling only negative instances).
    • Evaluated model performance on a variety of standard intrinsic and extrinsic natural language processing tasks.

    Main Results:

    • Embeddings learned by the proposed Seeds models (CBOW-GP, SG-GP, CBOW-GN, SG-GN) consistently outperformed their negative sampling (NS) based counterparts (CBOW-NS, SG-NS).
    • The new models also showed superiority over other strong baseline methods.
    • The proposed methods demonstrated effectiveness across diverse intrinsic and extrinsic evaluation tasks.

    Conclusions:

    • The Seeds framework offers a significant improvement over traditional negative sampling estimators for static word embeddings.
    • The proposed models provide a more effective and efficient approach to learning static word representations.
    • Further research into sampling-based static word embedding models is warranted due to their continued relevance.