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Quantifying and Rejecting Outliers: The Grubbs Test01:02

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Sometimes, a data set can have a recorded numerical observation that greatly  deviates from the rest of the data. Assuming that the data is normally distributed, a statistical method called the Grubbs test can be used to determine whether the observation is truly an outlier.  To perform a two-tailed Grubbs test, first, calculate the absolute difference between the outlier and the mean. Then, calculate the ratio between this difference and the standard deviation of the sample. This...
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Outliers and Influential Points01:08

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An outlier is an observation of data that does not fit the rest of the data. It is sometimes called an extreme value. When you graph an outlier, it will appear not to fit the pattern of the graph. Some outliers are due to mistakes (for example, writing down 50 instead of 500), while others may indicate that something unusual is happening. Outliers are present far from the least squares line in the vertical direction. They have large "errors," where the "error" or residual is the...
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What Are Outliers?01:12

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Outliers are observed data points that are far from the least squares line. They have unusual values and need to be examined carefully. Though an outlier may result from erroneous data, at other times, it may hold valuable information about the population under study and should be included in the data. Hence, it is crucial to examine what causes a data point to be an outlier.
The z score is used to find outliers or unusual values. It should be noted that any values beyond -2 and +2 are...
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Unusual Results01:16

Unusual Results

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Unusual results are those that have a very low chance of occurring. Unusual results can be identified using probabilities and the range rule of thumb. In problems involving probability, unusual results can be observed in 2 instances – an unusually high number of successes or an unusually low number of successes.
According to the range rule of thumb, any value above or below two standard deviations, 2σ  from the mean, μ  is considered unusual.
Maximum unusual value =...
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Detection of Gross Error: The Q Test01:00

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When one or more data points appear far from the rest of the data, there is a need to determine whether they are outliers and whether they should be eliminated from the data set to ensure an accurate representation of the measured value. In many cases, outliers arise from gross errors (or human errors) and do not accurately reflect the underlying phenomenon. In some cases, however, these apparent outliers reflect true phenomenological differences. In these cases, we can use statistical methods...
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Survival Tree01:19

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Survival trees are a non-parametric method used in survival analysis to model the relationship between a set of covariates and the time until an event of interest occurs, often referred to as the "time-to-event" or "survival time." This method is particularly useful when dealing with censored data, where the event has not occurred for some individuals by the end of the study period, or when the exact time of the event is unknown.
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Related Experiment Video

Updated: May 14, 2025

Design and Analysis for Fall Detection System Simplification
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Unsupervised Process Anomaly Detection and Identification Using the Leave-One-Variable-Out Approach.

Jacob A Farber1, Ahmad Y Al Rashdan1

  • 1Department of Automation, Instrumentation, and Controls, Idaho National Laboratory, Idaho Falls, ID 83415, USA.

Sensors (Basel, Switzerland)
|April 12, 2025
PubMed
Summary
This summary is machine-generated.

This study introduces the leave-one-variable-out (LOVO) model for unsupervised anomaly detection in industrial systems. The LOVO model shows promise for identifying equipment issues without needing extensive failure history.

Keywords:
anomaly detectionanomaly identificationleave-one-variable-out modelonline monitoringroot cause analysis

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Area of Science:

  • Industrial Engineering
  • Machine Learning
  • Data Science

Background:

  • Automated anomaly detection is crucial for industrial systems to identify equipment issues.
  • Unsupervised machine learning is valuable for systems with limited historical failure data.

Purpose of the Study:

  • Introduce and evaluate the leave-one-variable-out (LOVO) model for anomaly detection and identification.
  • Compare LOVO model performance against other unsupervised methods.

Main Methods:

  • The leave-one-variable-out (LOVO) model masks one variable at a time to predict others, learning process correlations.
  • Performance assessed using synthetic and experimental data for detection, and synthetic data for identification.

Main Results:

  • LOVO generally outperformed comparative models in synthetic data detection but not in experimental data.
  • Comparative models require optimal latent size selection, which is challenging in practice.
  • LOVO demonstrated impressive identification results with slight trade-offs in interpretability and repeatability.

Conclusions:

  • The LOVO model is an effective tool for anomaly detection and identification in industrial systems.
  • LOVO offers easier implementation by avoiding the need for challenging latent size tuning.