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Incidente 78: Meet the Secret Algorithm That's Keeping Students Out of College

Descripción: In response to the Covid-19 pandemic, the International Baccalaureate final exams were replaced by a calculated score, prompting complaints of unfairness from teachers and students.

Herramientas

Nuevo InformeNuevo InformeNueva RespuestaNueva RespuestaDescubrirDescubrirVer HistorialVer Historial

Entidades

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Presunto: un sistema de IA desarrollado e implementado por International Baccalaurette, perjudicó a International Baccalaureate students.

Estadísticas de incidentes

ID
78
Cantidad de informes
1
Fecha del Incidente
2020-07-06
Editores
Sean McGregor, Khoa Lam
Applied Taxonomies
CSETv0, CSETv1, GMF, MIT

Clasificaciones de la Taxonomía CSETv0

Detalles de la Taxonomía

Problem Nature

Indicates which, if any, of the following types of AI failure describe the incident: "Specification," i.e. the system's behavior did not align with the true intentions of its designer, operator, etc; "Robustness," i.e. the system operated unsafely because of features or changes in its environment, or in the inputs the system received; "Assurance," i.e. the system could not be adequately monitored or controlled during operation.
 

Unknown/unclear

Physical System

Where relevant, indicates whether the AI system(s) was embedded into or tightly associated with specific types of hardware.
 

Software only

Level of Autonomy

The degree to which the AI system(s) functions independently from human intervention. "High" means there is no human involved in the system action execution; "Medium" means the system generates a decision and a human oversees the resulting action; "low" means the system generates decision-support output and a human makes a decision and executes an action.
 

Low

Nature of End User

"Expert" if users with special training or technical expertise were the ones meant to benefit from the AI system(s)’ operation; "Amateur" if the AI systems were primarily meant to benefit the general public or untrained users.
 

Expert

Public Sector Deployment

"Yes" if the AI system(s) involved in the accident were being used by the public sector or for the administration of public goods (for example, public transportation). "No" if the system(s) were being used in the private sector or for commercial purposes (for example, a ride-sharing company), on the other.
 

No

Data Inputs

A brief description of the data that the AI system(s) used or were trained on.
 

Prior test and exam grades, school attended

Clasificaciones de la Taxonomía CSETv1

Detalles de la Taxonomía

Incident Number

The number of the incident in the AI Incident Database.
 

78

AI Tangible Harm Level Notes

Notes about the AI tangible harm level assessment
 

The harm was caused by a statistical algorithm that did not meet our definition of AI. Harm did occur, but it was intangible (opportunity loss) instead of tangible.

Clasificaciones de la Taxonomía MIT

Machine-Classified
Detalles de la Taxonomía

Risk Subdomain

A further 23 subdomains create an accessible and understandable classification of hazards and harms associated with AI
 

7.3. Lack of capability or robustness

Risk Domain

The Domain Taxonomy of AI Risks classifies risks into seven AI risk domains: (1) Discrimination & toxicity, (2) Privacy & security, (3) Misinformation, (4) Malicious actors & misuse, (5) Human-computer interaction, (6) Socioeconomic & environmental harms, and (7) AI system safety, failures & limitations.
 
  1. AI system safety, failures, and limitations

Entity

Which, if any, entity is presented as the main cause of the risk
 

AI

Timing

The stage in the AI lifecycle at which the risk is presented as occurring
 

Post-deployment

Intent

Whether the risk is presented as occurring as an expected or unexpected outcome from pursuing a goal
 

Unintentional

Informes del Incidente

Cronología de Informes

Incident OccurrenceConozca el algoritmo secreto que mantiene a los estudiantes fuera de la universidad
Conozca el algoritmo secreto que mantiene a los estudiantes fuera de la universidad

Conozca el algoritmo secreto que mantiene a los estudiantes fuera de la universidad

wired.com

Conozca el algoritmo secreto que mantiene a los estudiantes fuera de la universidad
wired.com · 2020
Traducido por IA

ANAHITA NAGPAL, DE DIECIOCHO AÑOS, teme que sus planes de comenzar a entrenarse este otoño para ser doctora hayan sido descarrilados por un modelo estadístico.

A Nagpal, que vive en Göttingen, Alemania, se le ofreció una plaza de premedicin…

Variantes

Una "Variante" es un incidente que comparte los mismos factores causales, produce daños similares e involucra los mismos sistemas inteligentes que un incidente de IA conocido. En lugar de indexar las variantes como incidentes completamente separados, enumeramos las variaciones de los incidentes bajo el primer incidente similar enviado a la base de datos. A diferencia de otros tipos de envío a la base de datos de incidentes, no se requiere que las variantes tengan informes como evidencia externa a la base de datos de incidentes. Obtenga más información del trabajo de investigación.

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