The Application of Affective Measures in Text-based Emotion Aware Recommender Systems
John Kalung Leung, Igor Griva, William G. Kennedy, Jason M. Kinser,, Sohyun Park, and Seo Young Lee

TL;DR
This paper introduces a privacy-preserving method for emotion-aware recommender systems using affective feature detection with GPT technology, enabling personalized recommendations without storing sensitive emotional data.
Contribution
It proposes a novel affective feature detection approach using GPT, and a privacy separation model allowing user data protection while maintaining recommendation quality.
Findings
Effective affective feature detection with GPT technology.
A privacy separation model that protects user emotional data.
Enables personalized recommendations without data retention.
Abstract
This paper presents an innovative approach to address the problems researchers face in Emotion Aware Recommender Systems (EARS): the difficulty and cumbersome collecting voluminously good quality emotion-tagged datasets and an effective way to protect users' emotional data privacy. Without enough good-quality emotion-tagged datasets, researchers cannot conduct repeatable affective computing research in EARS that generates personalized recommendations based on users' emotional preferences. Similarly, if we fail to fully protect users' emotional data privacy, users could resist engaging with EARS services. This paper introduced a method that detects affective features in subjective passages using the Generative Pre-trained Transformer Technology, forming the basis of the Affective Index and Affective Index Indicator (AII). Eliminate the need for users to build an affective feature…
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Taxonomy
TopicsOpinion Dynamics and Social Influence · Sentiment Analysis and Opinion Mining · Mental Health Research Topics
Methodstravel james · Attention Is All You Need · fail · Layer Normalization · Linear Layer · Label Smoothing · Dropout · Byte Pair Encoding · Multi-Head Attention · Residual Connection
