"splink" is happy and "phrouth" is scary: Emotion Intensity Analysis for Nonsense Words

02/24/2022
by   Valentino Sabbatino, et al.
0

People associate affective meanings to words – "death" is scary and sad while "party" is connotated with surprise and joy. This raises the question if the association is purely a product of the learned affective imports inherent to semantic meanings, or is also an effect of other features of words, e.g., morphological and phonological patterns. We approach this question with an annotation-based analysis leveraging nonsense words. Specifically, we conduct a best-worst scaling crowdsourcing study in which participants assign intensity scores for joy, sadness, anger, disgust, fear, and surprise to 272 non-sense words and, for comparison of the results to previous work, to 68 real words. Based on this resource, we develop character-level and phonology-based intensity regressors and evaluate them on real and nonsense words, and across these categories (making use of the NRC emotion intensity lexicon of 7493 words). The data analysis reveals that some phonetic patterns show clear differences between emotion intensities. For instance, s as a first phoneme contributes to joy, sh to surprise, p as last phoneme more to disgust than to anger and fear. In the modelling experiments, a regressor trained on real words from the NRC emotion intensity lexicon shows a higher performance (r = 0.17) than regressors that aim at learning the emotion connotation purely from nonsense words. We conclude that humans do associate affective meaning to words based on surface patterns, but also based on similarities to existing words ("juy" to "joy", or "flike" to "like").

READ FULL TEXT
research
08/11/2017

Emotion Intensities in Tweets

This paper examines the task of detecting intensity of emotion from text...
research
08/18/2017

EmoAtt at EmoInt-2017: Inner attention sentence embedding for Emotion Intensity

In this paper we describe a deep learning system that has been designed ...
research
11/06/2018

WordNet-feelings: A linguistic categorisation of human feelings

In this article, we present the first in depth linguistic study of human...
research
03/02/2021

Emotion Ratings: How Intensity, Annotation Confidence and Agreements are Entangled

When humans judge the affective content of texts, they also implicitly a...
research
08/31/2018

An Empirical Analysis of the Role of Amplifiers, Downtoners, and Negations in Emotion Classification in Microblogs

The effect of amplifiers, downtoners, and negations has been studied in ...
research
08/11/2017

WASSA-2017 Shared Task on Emotion Intensity

We present the first shared task on detecting the intensity of emotion f...
research
06/13/2023

Creating Emordle: Animating Word Cloud for Emotion Expression

We propose emordle, a conceptual design that animates wordles (compact w...

Please sign up or login with your details

Forgot password? Click here to reset