Multidimensional Local Precision Rate
Multidimensional Local Precision Rate, while not a formally defined term in the provided abstracts, encapsulates the current research focus on improving the accuracy and reliability of various machine learning models across diverse applications. This involves enhancing model precision through techniques like optimized quantization (e.g., block floating point), improved training strategies (e.g., adversarial training, curriculum learning), and refined architectures (e.g., U-Net variations, transformer models). The overarching goal is to achieve higher accuracy and robustness, particularly in challenging scenarios with noisy data, limited training samples, or real-time constraints, impacting fields ranging from medical image analysis and autonomous systems to natural language processing and robotic manipulation.
Papers
Acquire Precise and Comparable Fundus Image Quality Score: FTHNet and FQS Dataset
Zheng Gong, Zhuo Deng, Run Gan, Zhiyuan Niu, Lu Chen, Canfeng Huang, Jia Liang, Weihao Gao, Fang Li, Shaochong Zhang, Lan Ma
On the Accuracy and Precision of Moving Averages to Estimate Wi-Fi Link Quality
Gianluca Cena, Gabriele Formis, Matteo Rosani, Stefano Scanzio
Precision or Recall? An Analysis of Image Captions for Training Text-to-Image Generation Model
Sheng Cheng, Maitreya Patel, Yezhou Yang
Scaling Laws for Precision
Tanishq Kumar, Zachary Ankner, Benjamin F. Spector, Blake Bordelon, Niklas Muennighoff, Mansheej Paul, Cengiz Pehlevan, Christopher Ré, Aditi Raghunathan
The Representation of Meaningful Precision, and Accuracy
A Mani
Intramuscular High-Density Micro-Electrode Arrays Enable High-Precision Decoding and Mapping of Spinal Motor Neurons to Reveal Hand Control
Agnese Grison, Jaime Ibanez Pereda, Silvia Muceli, Aritra Kundu, Farah Baracat, Giacomo Indiveri, Elisa Donati, Dario Farina
Exploring Learnability in Memory-Augmented Recurrent Neural Networks: Precision, Stability, and Empirical Insights
Shrabon Das, Ankur Mali
Precision, Stability, and Generalization: A Comprehensive Assessment of RNNs learnability capability for Classifying Counter and Dyck Languages
Neisarg Dave, Daniel Kifer, Lee Giles, Ankur Mali