Class Vectors: Embedding representation of Document Classes

08/02/2015
by   Devendra Singh Sachan, et al.
0

Distributed representations of words and paragraphs as semantic embeddings in high dimensional data are used across a number of Natural Language Understanding tasks such as retrieval, translation, and classification. In this work, we propose "Class Vectors" - a framework for learning a vector per class in the same embedding space as the word and paragraph embeddings. Similarity between these class vectors and word vectors are used as features to classify a document to a class. In experiment on several sentiment analysis tasks such as Yelp reviews and Amazon electronic product reviews, class vectors have shown better or comparable results in classification while learning very meaningful class embeddings.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
07/29/2015

Document Embedding with Paragraph Vectors

Paragraph Vectors has been recently proposed as an unsupervised method f...
research
06/10/2016

WordNet2Vec: Corpora Agnostic Word Vectorization Method

A complex nature of big data resources demands new methods for structuri...
research
05/30/2018

What the Vec? Towards Probabilistically Grounded Embeddings

Vector representation, or embedding, of words is commonly achieved with ...
research
12/11/2015

Words are not Equal: Graded Weighting Model for building Composite Document Vectors

Despite the success of distributional semantics, composing phrases from ...
research
05/31/2017

Does the Geometry of Word Embeddings Help Document Classification? A Case Study on Persistent Homology Based Representations

We investigate the pertinence of methods from algebraic topology for tex...
research
02/26/2019

Improving a tf-idf weighted document vector embedding

We examine a number of methods to compute a dense vector embedding for a...
research
08/28/2020

Temporal Random Indexing of Context Vectors Applied to Event Detection

In this paper we explore new representations for encoding language data....

Please sign up or login with your details

Forgot password? Click here to reset