Homophone Reveals the Truth: A Reality Check for Speech2Vec

09/22/2022
by   Guangyu Chen, et al.
0

Generating spoken word embeddings that possess semantic information is a fascinating topic. Compared with text-based embeddings, they cover both phonetic and semantic characteristics, which can provide richer information and are potentially helpful for improving ASR and speech translation systems. In this paper, we review and examine the authenticity of a seminal work in this field: Speech2Vec. First, a homophone-based inspection method is proposed to check the speech embeddings released by the author of Speech2Vec. There is no indication that these embeddings are generated by the Speech2Vec model. Moreover, through further analysis of the vocabulary composition, we suspect that a text-based model fabricates these embeddings. Finally, we reproduce the Speech2Vec model, referring to the official code and optimal settings in the original paper. Experiments showed that this model failed to learn effective semantic embeddings. In word similarity benchmarks, it gets a correlation score of 0.08 in MEN and 0.15 in WS-353-SIM tests, which is over 0.5 lower than those described in the original paper. Our data and code are available.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
03/23/2018

Speech2Vec: A Sequence-to-Sequence Framework for Learning Word Embeddings from Speech

In this paper, we propose a novel deep neural network architecture, Spee...
research
07/21/2017

Mimicking Word Embeddings using Subword RNNs

Word embeddings improve generalization over lexical features by placing ...
research
09/08/2023

Leveraging Pretrained Image-text Models for Improving Audio-Visual Learning

Visually grounded speech systems learn from paired images and their spok...
research
07/02/2016

Representation learning for very short texts using weighted word embedding aggregation

Short text messages such as tweets are very noisy and sparse in their us...
research
04/18/2020

Effect of Text Color on Word Embeddings

In natural scenes and documents, we can find the correlation between a t...
research
12/20/2022

AnnoBERT: Effectively Representing Multiple Annotators' Label Choices to Improve Hate Speech Detection

Supervised approaches generally rely on majority-based labels. However, ...
research
10/07/2020

MuSeM: Detecting Incongruent News Headlines using Mutual Attentive Semantic Matching

Measuring the congruence between two texts has several useful applicatio...

Please sign up or login with your details

Forgot password? Click here to reset