Javascript must be enabled to continue!
From specific-source feature-based to common-source score-based likelihood-ratio systems: ranking the stars
View through CrossRef
This article studies expected performance and practical feasibility of the most commonly used classes of source-level likelihood-ratio (LR) systems when applied to a trace–reference comparison problem. The article compares performance of these classes of LR systems (used to update prior odds) to each other and to the use of prior odds only, using strictly proper scoring rules as performance measures. It also explores practical feasibility of the classes of LR systems. The present analysis allows for a ranking of these classes of LR systems: from specific-source feature-based to common-source anchored or non-anchored score-based. A trade-off between performance and practical feasibility is observed, meaning that the best performing class of LR systems is the hardest to realize in practice, while the least performing class is the easiest to realize in practice. The other classes of LR systems are in between the two extremes. The one positive exception is a common-source feature-based LR system, with good performance and relatively low experimental demands. This article also argues against the claim that some classes of LR systems should not be used, by showing that all systems have merit (when updating prior odds) over just using the prior odds (i.e. not using the LR system).
Title: From specific-source feature-based to common-source score-based likelihood-ratio systems: ranking the stars
Description:
This article studies expected performance and practical feasibility of the most commonly used classes of source-level likelihood-ratio (LR) systems when applied to a trace–reference comparison problem.
The article compares performance of these classes of LR systems (used to update prior odds) to each other and to the use of prior odds only, using strictly proper scoring rules as performance measures.
It also explores practical feasibility of the classes of LR systems.
The present analysis allows for a ranking of these classes of LR systems: from specific-source feature-based to common-source anchored or non-anchored score-based.
A trade-off between performance and practical feasibility is observed, meaning that the best performing class of LR systems is the hardest to realize in practice, while the least performing class is the easiest to realize in practice.
The other classes of LR systems are in between the two extremes.
The one positive exception is a common-source feature-based LR system, with good performance and relatively low experimental demands.
This article also argues against the claim that some classes of LR systems should not be used, by showing that all systems have merit (when updating prior odds) over just using the prior odds (i.
e.
not using the LR system).
Related Results
Violations of the Ingleton inequality and revising the four-atom conjecture
Violations of the Ingleton inequality and revising the four-atom conjecture
The entropy region is a fundamental object of study in mathematics, statistics, and information theory. On the one hand, it involves pure group theory, governing inequalities satis...
Persistent Unmanned Surface Vehicles for Subsea Support
Persistent Unmanned Surface Vehicles for Subsea Support
Abstract
This paper discusses the role of unmanned systems in subsea support. Recent developments in mobile unmanned vehicle networks are reviewed, demonstrating ...
Staging Scores: Devising Contemporary Performances from Classical Music
Staging Scores: Devising Contemporary Performances from Classical Music
In this article, Egan and Pinchbeck combine Postdramatic Theatre (Lehmann, 2006), Composed Theatre (Rebstock and Roesner, 2012) and Score Theatre (Spagnolo, 2017) to address the re...
FSEFST:Feature Selection and Extraction using Feature Subset Technique in High Dimensional Data
FSEFST:Feature Selection and Extraction using Feature Subset Technique in High Dimensional Data
Dimensionality reduction is one of the pre-processing phases required when large amount of data is available. Feature selection and Feature Extraction are one of the methods used t...
SYSTEM-STRUCTURAL ASPECT OF THE SELECTIONELEMENTS OF ROBOTIC SYSTEMS
SYSTEM-STRUCTURAL ASPECT OF THE SELECTIONELEMENTS OF ROBOTIC SYSTEMS
The article is devoted to solving the problems of technological preparation of robotic production. Currently, the creation of robotic systems has acquired the status of a completel...
Brightness of Different Hues Is a Single Psychophysical Ratio Scale of Intensity
Brightness of Different Hues Is a Single Psychophysical Ratio Scale of Intensity
Abstract
Recent studies based on testable behavioral axioms have concluded that psychological scales of subjective intensive attributes involving the ears and eyes f...
Factors Influencing Patient Safety Management Behaviors in Nursing Students
Factors Influencing Patient Safety Management Behaviors in Nursing Students
The objective of this study is to identify the critical thinking Disposition, problem-solving processes, safety motivation, patient safety management knowledge, attitudes towards p...
Information Resources Economy in Satellite Systems based on New Microwave Polarizers with Tunable Posts
Information Resources Economy in Satellite Systems based on New Microwave Polarizers with Tunable Posts
One of the fundamental problems of modern digital telecommunications is the economy of digital information and frequency resources, which are highly limited. The introduction of no...