The concept of unsupervised universal sentence encoders has gained traction recently, wherein pre-trained models generate effective task-agnostic fixed-dimensional representations for phrases, sentences and paragraphs. Such methods are of varying complexity, from simple weighted-averages of word vectors to complex language-models based on bidirectional transformers. In this work we propose a novel technique to generate sentence-embeddings in an unsupervised fashion by projecting the sentences onto a fixed-dimensional manifold with the objective of preserving local neighbourhoods in the original space. To delineate such neighbourhoods we experiment with several set-distance metrics, including the recently proposed Word Mover's distance, while the fixed-dimensional projection is achieved by employing a scalable and efficient manifold approximation method rooted in topological data analysis. We test our approach, which we term EMAP or Embeddings by Manifold Approximation and Projection, on six publicly available text-classification datasets of varying size and complexity. Empirical results show that our method consistently performs similar to or better than several alternative state-of-the-art approaches.
翻译:在这项工作中,我们提出了一个新技术,通过将判决投射到一个固定的层面,从而在原始空间保护当地居民区,从而在不受监督的情况下生成判决组合。为了界定这些街区,我们试验了若干设定距离的测量标准,包括最近提议的Word Moler距离,而固定距离的预测则是通过在地形学数据分析中采用可缩放的高效多重近似方法实现的。我们测试了我们的方法,我们用Manifold Approximation 和Project 等六种公开的文本分类数据集将EMAP或嵌入式称为Manifold Approximation和Projection。Empical结果显示,我们的方法一直与几种替代状态和复杂程度不同的方法相似或更好。