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What are the most cited papers on feature analysis? 


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The most cited papers on feature analysis encompass various fields. Minsky and McCarthy's work in the 1950s laid the foundation for AI and neural networks, emphasizing the importance of training machines to perform tasks requiring intelligence . Hasinoff and Bivens introduced "feature analysis" as a method to understand how app developers' design choices reflect cultural norms and ideologies in app development . Hazard et al. provided techniques for creating balanced computer-based reasoning systems, applicable in controlling diverse systems like self-driving cars and smart voice controls . Vázquez-Araújo highlighted the significance of sensory science in the food and beverage industry for quality assurance and consumer response analysis . Poursoltan and Neumann's study delved into feature-based analysis for constrained continuous optimization, showcasing the impact of linear constraints on optimization algorithms .

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Open accessJournal ArticleDOI
Amy Adele Hasinoff, Rena Bivens 
02 Sep 2021
1 Citations
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