Jove
Visualize
Contact Us
JoVE
x logofacebook logolinkedin logoyoutube logo
ABOUT JoVE
OverviewLeadershipBlogJoVE Help Center
AUTHORS
Publishing ProcessEditorial BoardScope & PoliciesPeer ReviewFAQSubmit
LIBRARIANS
TestimonialsSubscriptionsAccessResourcesLibrary Advisory BoardFAQ
RESEARCH
JoVE JournalMethods CollectionsJoVE Encyclopedia of ExperimentsArchive
EDUCATION
JoVE CoreJoVE BusinessJoVE Science EducationJoVE Lab ManualFaculty Resource CenterFaculty Site
Terms & Conditions of Use
Privacy Policy
Policies

Related Concept Videos

Sampling Distribution01:12

Sampling Distribution

19.4K
Given simple random samples of size n from a given population with a measured characteristic such as mean, proportion, or standard deviation for each sample, the probability distribution of all the measured characteristics is called a sampling distribution. How much the statistic varies from one sample to another is known as the sampling variability of a statistic. You typically measure the sampling variability of a statistic by its standard error. The standard error of the mean is an example...
19.4K
Statistical Analysis: Overview01:11

Statistical Analysis: Overview

17.6K
When we take repeated measurements on the same or replicated samples, we will observe inconsistencies in the magnitude. These inconsistencies are called errors. To categorize and characterize these results and their errors, the researcher can use statistical analysis to determine the quality of the measurements and/or suitability of the methods.
One of the most commonly used statistical quantifiers is the mean, which is the ratio between the sum of the numerical values of all results and the...
17.6K
Distributions to Estimate Population Parameter01:26

Distributions to Estimate Population Parameter

5.7K
The accurate values of population parameters such as population proportion, population mean, and population standard deviation (or variance) are usually unknown. These are fixed values that can only be estimated from the data collected from the samples. The estimates of each of these parameters are sample proportion, the sample mean, and sample standard deviation (or variance). To obtain the values of these sample statistics, data are required that have particular distribution and central...
5.7K
Data: Types and Distribution01:19

Data: Types and Distribution

2.2K
In biostatistics, data are the observations collected for analysis. There are two main types: parametric and non-parametric. Parametric data, which include continuous (e.g., weight) and discrete numerical data (e.g., number of tablets), assume a particular distribution pattern, often the normal distribution. Non-parametric data do not adhere to a specific distribution and typically comprise nominal (e.g., gender) and ordinal categorical data (e.g., pain scale ratings).
Distributions in...
2.2K
Review and Preview01:13

Review and Preview

12.2K
Data are individual items of information obtained from a population or sample. Data may be classified as qualitative (categorical), quantitative continuous, or quantitative discrete. Because it is not practical to measure the entire population in a study, researchers use samples to represent the population. A random sample is a representative group from the population chosen by using a method that gives each individual in the population an equal chance of being included in the sample. Random...
12.2K
Probability Distributions01:32

Probability Distributions

13.5K
 The probability of a random variable x  is the likelihood of its occurrence. A probability distribution represents the probabilities of a random variable using a formula, graph, or table. There are two types of probability distribution– discrete probability distribution and continuous probability distribution.
A discrete probability distribution is a probability distribution of discrete random variables. It can be categorized into binomial probability distribution and Poisson...
13.5K

You might also read

Related Articles

Articles linked to this work by shared authors, journal, and citation graph.

Sort by
Same author

Diminished rest-activity rhythm is associated with postoperative complications and mortality: A prospective cohort study of UK Biobank participants.

European journal of anaesthesiology·2026
Same author

Salt priming coordinates transcriptional and epigenetic states for enhanced salt tolerance in mung bean (Vigna radiata).

Communications biology·2026
Same author

Clinical predictors of overall survival in very elderly patients with spinal osteosarcoma: an analysis of the surveillance, epidemiology, and end results database.

Neuro-Chirurgie·2026
Same author

Corrigendum to "Injectable hydrogel for postoperative synergistic photothermal-chemodynamic tumor and anti-infection therapy" [Biomaterials 280(2022) 121289].

Biomaterials·2026
Same author

Post-Pandemic Influenza Resurgence in Guangzhou, China: Impact of COVID-19 Interventions and Immune Alterations.

Journal of medical virology·2026
Same author

Detection of Artemisia mongolica floss adulteration in moxa floss: A strategy based on UPLC-Q/Orbitrap HRMS, chromatographic analysis, and machine learning.

Journal of pharmaceutical and biomedical analysis·2026
Same journal

Blue Noise Dithering for Reservoir-based Spatio-temporal Importance Resampling.

IEEE transactions on visualization and computer graphics·2026
Same journal

ROS-GS: Relightable Outdoor Scenes With Gaussian Splatting.

IEEE transactions on visualization and computer graphics·2026
Same journal

MesoSplats: Texture Synthesis with Gaussian Splatting.

IEEE transactions on visualization and computer graphics·2026
Same journal

GLLA: A Unified Force-Directed Graph Layout Framework Supporting Local Adjustments.

IEEE transactions on visualization and computer graphics·2026
Same journal

Multi-Perception Crowd: Learning to combine entity and implicit perception for diverse crowd simulation.

IEEE transactions on visualization and computer graphics·2026
Same journal

Hiding in Plain Sight: Camouflaging Real-world Objects.

IEEE transactions on visualization and computer graphics·2026
See all related articles

Related Experiment Video

Updated: Apr 8, 2026

Facilitating the Analysis of Immunological Data with Visual Analytic Techniques
10:58

Facilitating the Analysis of Immunological Data with Visual Analytic Techniques

Published on: January 2, 2011

10.6K

Trustworthy Deep Learning-Assisted Visualization and Analysis for Distribution-Based Ensemble Scientific Data

Han Huang, Zheng-Han Huang, Nathania Josephine

    IEEE Transactions on Visualization and Computer Graphics
    |April 6, 2026
    PubMed
    Summary
    This summary is machine-generated.

    Scientists can now reconstruct detailed data volumes from compact representations using a novel deep learning model. This approach overcomes limitations in data storage and analysis, enabling better uncertainty quantification and high-fidelity scientific visualization.

    More Related Videos

    ExCYT: A Graphical User Interface for Streamlining Analysis of High-Dimensional Cytometry Data
    05:12

    ExCYT: A Graphical User Interface for Streamlining Analysis of High-Dimensional Cytometry Data

    Published on: January 16, 2019

    12.1K
    Visualization and Quantification of High-Dimensional Cytometry Data using Cytofast and the Upstream Clustering Methods FlowSOM and Cytosplore
    06:01

    Visualization and Quantification of High-Dimensional Cytometry Data using Cytofast and the Upstream Clustering Methods FlowSOM and Cytosplore

    Published on: December 12, 2019

    9.1K

    Related Experiment Videos

    Last Updated: Apr 8, 2026

    Facilitating the Analysis of Immunological Data with Visual Analytic Techniques
    10:58

    Facilitating the Analysis of Immunological Data with Visual Analytic Techniques

    Published on: January 2, 2011

    10.6K
    ExCYT: A Graphical User Interface for Streamlining Analysis of High-Dimensional Cytometry Data
    05:12

    ExCYT: A Graphical User Interface for Streamlining Analysis of High-Dimensional Cytometry Data

    Published on: January 16, 2019

    12.1K
    Visualization and Quantification of High-Dimensional Cytometry Data using Cytofast and the Upstream Clustering Methods FlowSOM and Cytosplore
    06:01

    Visualization and Quantification of High-Dimensional Cytometry Data using Cytofast and the Upstream Clustering Methods FlowSOM and Cytosplore

    Published on: December 12, 2019

    9.1K

    Area of Science:

    • Computational Science
    • Data Science
    • Scientific Visualization

    Background:

    • Ensemble datasets from scientific simulations are crucial for studying complex phenomena.
    • Large datasets pose challenges for traditional data analysis due to I/O and storage limitations.
    • Distribution-based representations offer a compact alternative but sacrifice spatial information.

    Purpose of the Study:

    • To develop a method for reconstructing high-fidelity data volumes from distribution-based representations.
    • To address the loss of spatial information in traditional distribution-based methods.
    • To enhance downstream data analysis and uncertainty quantification.

    Main Methods:

    • Introduced a deep learning model utilizing the Sinkhorn operator and Gumbel trick.
    • The model learns to map samples from a distribution to spatial locations within a data block.
    • Reconstruction is performed directly from the distribution representation, not a direct prediction.

    Main Results:

    • The deep learning model successfully reconstructs data volumes from distribution representations.
    • The reconstructed data preserves spatial information, improving analysis precision.
    • The method supports high-quality downstream analysis, visualization, and point-wise uncertainty quantification.

    Conclusions:

    • The proposed deep learning approach effectively reconstructs data volumes while preserving spatial fidelity.
    • This method alleviates I/O and storage constraints for large scientific datasets.
    • Enables advanced data analysis, visualization, and uncertainty quantification for complex simulations.