A Data-Driven Approach for Finding Requirements Relevant Feedback from TikTok and YouTube
May 02, 2023 Β· Declared Dead Β· π IEEE International Requirements Engineering Conference
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Authors
Manish Sihag, Ze Shi Li, Amanda Dash, Nowshin Nawar Arony, Kezia Devathasan, Neil Ernst, Alexandra Albu, Daniela Damian
arXiv ID
2305.01796
Category
cs.HC: Human-Computer Interaction
Cross-listed
cs.SE
Citations
9
Venue
IEEE International Requirements Engineering Conference
Last Checked
4 months ago
Abstract
The increasing importance of videos as a medium for engagement, communication, and content creation makes them critical for organizations to consider for user feedback. However, sifting through vast amounts of video content on social media platforms to extract requirements-relevant feedback is challenging. This study delves into the potential of TikTok and YouTube, two widely used social media platforms that focus on video content, in identifying relevant user feedback that may be further refined into requirements using subsequent requirement generation steps. We evaluated the prospect of videos as a source of user feedback by analyzing audio and visual text, and metadata (i.e., description/title) from 6276 videos of 20 popular products across various industries. We employed state-of-the-art deep learning transformer-based models, and classified 3097 videos consisting of requirements relevant information. We then clustered relevant videos and found multiple requirements relevant feedback themes for each of the 20 products. This feedback can later be refined into requirements artifacts. We found that product ratings (feature, design, performance), bug reports, and usage tutorial are persistent themes from the videos. Video-based social media such as TikTok and YouTube can provide valuable user insights, making them a powerful and novel resource for companies to improve customer-centric development.
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