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Related Concept Videos

Types of Errors: Detection and Minimization01:12

Types of Errors: Detection and Minimization

Error is the deviation of the obtained result from the true, expected value or the estimated central value. Errors are expressed in absolute or relative terms.
Absolute error in a measurement is the numerical difference from the true or central value. Relative error is the ratio between absolute error and the true or central value, expressed as a percentage.
Errors can be classified by source, magnitude, and sign. There are three types of errors: systematic, random, and gross.
Systematic or...
Detection of Gross Error: The Q Test01:00

Detection of Gross Error: The Q Test

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...
Natural and Artificial Concepts01:24

Natural and Artificial Concepts

In psychology, concepts can be divided into two categories: natural and artificial. Natural concepts are formed through direct or indirect experiences. For example, consider the concept of snow. If you live in a place with regular snowfall, such as Essex Junction, Vermont, you know snow through direct experiences. You’ve seen it fall, touched it, shoveled it, and played in it. You recognize its texture, appearance, and even its smell. In contrast, if you live on an island like Saint Vincent in...
Stereotype Content Model02:16

Stereotype Content Model

The Stereotype Content Model (SCM) was first proposed by Susan Fiske and her colleagues (Fiske, Cuddy, Glick & Xu, 2002; see also Fiske, 2012 and Fiske, 2017). The SCM specifies that when someone encounters a new group, they will stereotype them based on two metrics: warmth—or that group’s perceived intent, and how likely they are to provide help or inflict harm—and competence—or their ability to carry out that objective. Depending on the warmth-competence categorization, a person will feel...
Understanding Deception01:14

Understanding Deception

Deception is a pervasive aspect of human communication. Empirical studies have shown that most individuals engage in some form of deceit on a daily basis, with approximately 20% of social exchanges involving deceptive elements. Lying follows a developmental trajectory, peaking during adolescence and declining with age, possibly due to the maturation of cognitive control and social accountability.Cognitive and Social Factors in Deception DetectionDespite its prevalence, accurately detecting...
Concepts and Prototypes01:24

Concepts and Prototypes

The human nervous system handles vast amounts of information by translating sensory stimuli into neural impulses, which the brain processes, creating thoughts expressed through language or stored as memories. The brain also synthesizes information from emotions and memories, which significantly influence thoughts and behaviors. This intricate process creates a comprehensive mental picture.
The brain organizes this information using concepts, which are mental categories grouping linguistic data,...

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Related Experiment Videos

Interpretable Failure Detection with Human-Level Concepts.

Kien X Nguyen1, Tang Li1, Xi Peng1

  • 1Department of Computer and Information Sciences, University of Delaware, Newark, DE, USA.

Proceedings of the ... AAAI Conference on Artificial Intelligence. AAAI Conference on Artificial Intelligence
|June 15, 2026
PubMed
Summary
This summary is machine-generated.

This study introduces a new method using human-level concepts to detect and explain neural network failures. It significantly reduces false positives in image classification tasks.

Related Experiment Videos

Area of Science:

  • Computer Science
  • Artificial Intelligence
  • Machine Learning

Background:

  • Reliable failure detection is crucial for safety-critical applications.
  • Neural networks often exhibit overconfident predictions for misclassified data.
  • Current failure detection methods using category-level signals (logits) are insufficient.

Purpose of the Study:

  • To develop a novel strategy for reliable neural network failure detection.
  • To enable transparent interpretation of the reasons behind model failures.
  • To improve the accuracy of confidence scores in image classification.

Main Methods:

  • Leveraging human-level concepts for failure analysis.
  • Integrating nuanced signals for each category for finer-grained confidence assessment.
  • Utilizing ordinal ranking of concept activation to input images.

Main Results:

  • Significantly reduced false positive rates across diverse benchmarks.
  • Achieved a 3.7% reduction in false positives on ImageNet.
  • Achieved a 9% reduction in false positives on EuroSAT.

Conclusions:

  • The proposed concept-based approach offers a simple yet highly effective solution for failure detection.
  • This method enhances model transparency by explaining failure causes.
  • The approach demonstrates superior performance in reducing false positives in real-world image classification.