Sentiment analysis meets explainable artificial intelligence: A survey on explainable sentiment analysis
Sentiment analysis can be used to derive knowledge that is connected to emotions and
opinions from textual data generated by people. As computer power has grown, and the …
opinions from textual data generated by people. As computer power has grown, and the …
Capturing stance dynamics in social media: open challenges and research directions
Social media platforms provide a goldmine for mining public opinion on issues of wide
societal interest and impact. Opinion mining is a problem that can be operationalised by …
societal interest and impact. Opinion mining is a problem that can be operationalised by …
SenticNet
SenticNet is the knowledge base which the sentic computing framework leverages on for
concept-level sentiment analysis. This chapter illustrates how such a resource is built. In …
concept-level sentiment analysis. This chapter illustrates how such a resource is built. In …
A hybrid lexicon-based and neural approach for explainable polarity detection
In this work, we propose BERT-WMAL, a hybrid model that brings together information
coming from data through the recent transformer deep learning model and those obtained …
coming from data through the recent transformer deep learning model and those obtained …
Multi-view informed attention-based model for Irony and Satire detection in Spanish variants
Making machines understand language and reasoning on it has been one of the most
challenging problems addressed by Artificial Intelligent researchers. This challenge …
challenging problems addressed by Artificial Intelligent researchers. This challenge …
Explainable sentiment analysis: a hierarchical transformer-based extractive summarization approach
In recent years, the explainable artificial intelligence (XAI) paradigm is gaining wide
research interest. The natural language processing (NLP) community is also approaching …
research interest. The natural language processing (NLP) community is also approaching …
The case for perspective in multimodal datasets
This paper argues in favor of the adoption of annotation practices for multimodal datasets
that recognize and represent the inherently perspectivized nature of multimodal …
that recognize and represent the inherently perspectivized nature of multimodal …
Token replacement-based data augmentation methods for hate speech detection
Hate speech detection mostly involves the use of text data. This data, usually sourced from
various social media platforms, have been known to be plagued with numerous issues that …
various social media platforms, have been known to be plagued with numerous issues that …
Masking and BERT-based models for stereotype identication
Stereotypes about immigrants are a type of social bias increasingly present in the human
interaction in social networks and political speeches. This challenging task is being studied …
interaction in social networks and political speeches. This challenging task is being studied …
Change my mind: How syntax-based hate speech recognizer can uncover hidden motivations based on different viewpoints
Hate speech recognizers may mislabel sentences by not considering the different opinions
that society has on selected topics. In this paper, we show how explainable machine …
that society has on selected topics. In this paper, we show how explainable machine …