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A Comparison of Deep and Shallow Residual Networks for Medical Imaging Classification
DescriptionThe complexity and parameters of mainstream large models are increasing rapidly. For example, the increasingly popular large language models (e.g., ChatGPT) have billions of parameters. While this has led to performance improvements, the performance gains for simple tasks may be unacceptable for the additional cost. We apply residual networks of three different depths and evaluate them extensively on the MedMNIST pneumonia dataset. Experimental results show that smaller models can achieve satisfactory performance at significantly lower costs than larger models.
Event Type
ACM Student Research Competition: Graduate Poster
ACM Student Research Competition: Undergraduate Poster
Posters
TimeTuesday, 14 November 202310am - 5pm MST
Registration Categories
TP
XO/EX