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Related Concept Videos

Calibration Curves: Linear Least Squares01:20

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A calibration curve is a plot of the instrument's response against a series of known concentrations of a substance. This curve is used to set the instrument response levels, using the substance and its concentrations as standards. Alternatively, or additionally, an equation is fitted to the calibration curve plot and subsequently used to calculate the unknown concentrations of other samples reliably.
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Instrument calibration is essential for ensuring that instruments produce accurate and consistent results. It is vital in manufacturing, healthcare, testing laboratories, and scientific research. Calibration processes are specific to each instrument and help enhance data accuracy. Each instrument has a unique calibration process tailored to its design and function to improve data accuracy.
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Uncertainty in Measurement: Accuracy and Precision03:37

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Scientists typically make repeated measurements of a quantity to ensure the quality of their findings and to evaluate both the precision and the accuracy of their results. Measurements are said to be precise if they yield very similar results when repeated in the same manner. A measurement is considered accurate if it yields a result that is very close to the true or the accepted value. Precise values agree with each other; accurate values agree with a true value. 
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Calibration Curves: Correlation Coefficient01:10

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In a linear calibration curve, there is a value called the calibration coefficient, denoted by 'r,' which measures the strength and the direction of association between two variables. The correlation coefficient value ranges from −1 to +1. A value of +1 indicates a perfect positive linear correlation, −1 denotes a perfect negative correlation, and 0 implies no correlation between the two variables. A positive correlation value establishes that as one variable increases, the...
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Propagation of Uncertainty from Systematic Error01:10

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The atomic mass of an element varies due to the relative ratio of its isotopes. A sample's relative proportion of oxygen isotopes influences its average atomic mass. For instance, if we were to measure the atomic mass of oxygen from a sample, the mass would be a weighted average of the isotopic masses of oxygen in that sample. Since a single sample is not likely to perfectly reflect the true atomic mass of oxygen for all the molecules of oxygen on Earth, the mass we obtain from this...
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In the case of systematic errors, the sources can be identified, and the errors can be subsequently minimized by addressing these sources. According to the source, systematic errors can be divided into sampling, instrumental, methodological, and personal errors.
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Updated: Sep 18, 2025

Split Point Analysis and Uncertainty Quantification of Thermal-Optical Organic/Elemental Carbon Measurements
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H-Calibration: Rethinking Classifier Recalibration With Probabilistic Error-Bounded Objective.

Wenjian Huang, Guiping Cao, Jiahao Xia

    IEEE Transactions on Pattern Analysis and Machine Intelligence
    |June 24, 2025
    PubMed
    Summary
    This summary is machine-generated.

    Deep neural networks often produce unreliable probabilities due to miscalibration. This study introduces h-calibration, a novel probabilistic framework and algorithm that achieves state-of-the-art performance in generating reliable likelihoods.

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    Area of Science:

    • Machine Learning
    • Artificial Intelligence
    • Probability Theory

    Background:

    • Deep neural networks (DNNs) excel in various tasks but frequently exhibit miscalibration, leading to unreliable probability outputs.
    • Post-hoc recalibration methods aim to improve DNN probability reliability without compromising classification performance.
    • Existing methods face limitations, motivating the development of more robust calibration techniques.

    Purpose of the Study:

    • To categorize and analyze limitations of current post-hoc calibration methods for DNNs.
    • To propose a novel probabilistic learning framework, $h$-calibration, for enhanced model calibration.
    • To develop an effective post-hoc calibration algorithm based on the $h$-calibration framework.

    Main Methods:

    • Categorization and theoretical/practical analysis of existing calibration strategies (intuitive, binning-based, ideal calibration formulations).
    • Development of the $h$-calibration probabilistic learning framework, establishing an equivalent learning formulation for canonical calibration with boundedness.
    • Design and implementation of a post-hoc calibration algorithm derived from the $h$-calibration framework.

    Main Results:

    • Identified and addressed ten common limitations in previous post-hoc calibration approaches.
    • The proposed $h$-calibration algorithm demonstrated superior performance compared to traditional methods in extensive experiments.
    • Achieved state-of-the-art results on standard post-hoc calibration benchmarks, validating theoretical effectiveness.

    Conclusions:

    • The $h$-calibration framework provides a theoretically sound and practically effective approach to learning error-bounded calibrated probabilities.
    • The research elucidates the convergence properties of computational statistics concerning theoretical bounds in canonical calibration.
    • This work offers a valuable reference for improving reliable likelihood estimation in machine learning and related fields.