Words, Tweets, and Reviews: Leveraging Affective Knowledge Between Multiple Domains
Otro
Open/ Download
Access note
Acceso abierto
Publication date
2021Metadata
Show full item record
Cómo citar
Bravo Márquez, Felipe
Cómo citar
Words, Tweets, and Reviews: Leveraging Affective Knowledge Between Multiple Domains
Abstract
Three popular application domains of sentiment and emotion analysis are: 1) the automatic rating of movie reviews, 2) extracting opinions and
emotions on Twitter, and 3) inferring sentiment and emotion associations of words.
The textual elements of these domains differ in their length i.e., movie reviews are
usually longer than tweets and words are obviously shorter than tweets, but they also
share the property that they can be plausibly annotated according to the same affective
categories (e.g., positive, negative, anger, joy). Moreover, state-of-the-art models for
these domains are all based on the approach of training supervised machine learning
models on manually-annotated examples. This approach suffers from an important
bottleneck: manually annotated examples are expensive and time-consuming to obtain and not always available.
Methods In this paper we propose a method for transferring affective knowledge between words, tweets, and movie reviews using two representation techniques:
Word2Vec static embeddings and BERT contextualized embeddings. We build compatible representations for movie reviews, tweets, and words, using these techniques
and train and evaluate supervised models on all combinations of source and target
domains.
Results and Conclusions Our experimental results show that affective knowledge
can be successfully transferred between our three domains, that contextualized embeddings tend to outperform their static counterparts, and that better transfer learning
results are obtained when the source domain has longer textual units that the target
domain.
Identifier
URI: https://repositorio.uchile.cl/handle/2250/183869
Quote Item
Noname manuscript No. (will be inserted by the editor)
Collections
The following license files are associated with this item: