TL;DR
This paper presents techniques to automatically expand domain-specific affective models using knowledge graphs and language models, enhancing emotion coverage and interpretability for web intelligence applications.
Contribution
It introduces novel expansion methods for affective models that incorporate commonsense knowledge and language models, tailored for domain-specific emotional analysis.
Findings
Improved coverage and consistency of affective models.
Effective expansion techniques validated on complex emotion models.
Support for various embeddings and pre-trained models.
Abstract
Sentic computing relies on well-defined affective models of different complexity - polarity to distinguish positive and negative sentiment, for example, or more nuanced models to capture expressions of human emotions. When used to measure communication success, even the most granular affective model combined with sophisticated machine learning approaches may not fully capture an organisation's strategic positioning goals. Such goals often deviate from the assumptions of standardised affective models. While certain emotions such as Joy and Trust typically represent desirable brand associations, specific communication goals formulated by marketing professionals often go beyond such standard dimensions. For instance, the brand manager of a television show may consider fear or sadness to be desired emotions for its audience. This article introduces expansion techniques for affective models,…
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