logo Idiap Research Institute        
 [BibTeX] [Marc21]
CBOW Is Not All You Need: Combining CBOW with the Compositional Matrix Space Model
Type of publication: Conference paper
Citation: Mai_ICLR2019_2019
Publication status: Published
Booktitle: International Conference on Learning Representations
Year: 2019
Location: New Orleans, Louisiana, USA
Crossref: Mai_Idiap-RR-06-2019:
URL: https://openreview.net/forum?i...
Abstract: Continuous Bag of Words (CBOW) is a powerful text embedding method. Due to its strong capabilities to encode word content, CBOW embeddings perform well on a wide range of downstream tasks while being efficient to compute. However, CBOW is not capable of capturing the word order. The reason is that the computation of CBOW's word embeddings is commutative, i.e., embeddings of XYZ and ZYX are the same. In order to address this shortcoming, we propose a learning algorithm for the Continuous Matrix Space Model, which we call Continual Multiplication of Words (CMOW). Our algorithm is an adaptation of word2vec, so that it can be trained on large quantities of unlabeled text. We empirically show that CMOW better captures linguistic properties, but it is inferior to CBOW in memorizing word content. Motivated by these findings, we propose a hybrid model that combines the strengths of CBOW and CMOW. Our results show that the hybrid CBOW-CMOW-model retains CBOW's strong ability to memorize word content while at the same time substantially improving its ability to encode other linguistic information by 8%. As a result, the hybrid also performs better on 8 out of 11 supervised downstream tasks with an average improvement of 1.2%.
Keywords: Efficient training scheme, Sentence embedding, Text representation learning, word2vec
Projects Idiap
Authors Mai, Florian
Galke, Lukas
Scherp, Ansgar
Added by: [UNK]
Total mark: 0
Attachments
    Notes