scholarly journals Machine learning as a model for cultural learning: Teaching an algorithm what it means to be fat

2020 ◽  
Author(s):  
Alina Arseniev-Koehler ◽  
Jacob G. Foster

As we navigate our cultural environment, we learn cultural biases, like those around gender, social class, health, and body weight. It is unclear, however, exactly how public culture becomes private culture. In this paper, we provide a theoretical account of such cultural learning. We propose that neural word embeddings provide a parsimonious and cognitively plausible model of the representations learned from natural language. Using neural word embeddings, we extract cultural schemata about body weight from New York Times articles. We identify several cultural schemata that link obesity to gender, immorality, poor health, and low socioeconomic class. Such schemata may be subtly but pervasively activated in public culture; thus, language can chronically reproduce biases. Our findings reinforce ongoing concerns that machine learning can also encode, and reproduce, harmful human biases.

2003 ◽  
Vol 15 (3) ◽  
pp. 98-105 ◽  
Author(s):  
Mark Galliker ◽  
Jan Herman
Keyword(s):  
New York ◽  

Zusammenfassung. Am Beispiel der Repräsentation von Mann und Frau in der Times und in der New York Times wird ein inhaltsanalytisches Verfahren vorgestellt, das sich besonders für die Untersuchung elektronisch gespeicherter Printmedien eignet. Unter Co-Occurrence-Analyse wird die systematische Untersuchung verbaler Kombinationen pro Zähleinheit verstanden. Diskutiert wird das Problem der Auswahl der bei der Auswertung und Darstellung der Ergebnisse berücksichtigten semantischen Einheiten.


Cultura ◽  
2019 ◽  
Vol 16 (1) ◽  
pp. 53-73
Author(s):  
Saman REZAEI ◽  
Kamyar KOBARI ◽  
Ali SALAMI

With the realization of the promised global village, media, particularly online newspapers, play a significant role in delivering news to the world. However, such means of news circulation can propagate different ideologies in line with the dominant power. This, coupled with the emergence of so-called Islamic terrorist groups, has turned the focus largely on Islam and Muslims. This study attempts to shed light on the image of Islam being portrayed in Western societies through a Critical Discourse Analysis approach. To this end, a number of headlines about Islam or Muslims have been randomly culled from three leading newspapers in Western print media namely The Guardian, The Independent and The New York Times (2015). This study utilizes “ideological square” notion of Van Dijk characterized by “positive presentation” of selves and “negative presentation” of others alongside his socio-cognitive approach. Moreover, this study will take the linguistic discourses introduced by Van Leeuwen regarding “representing social actors and social practices” into consideration. The findings can be employed to unravel the mystery behind the concept of “Islamophobia” in Western societies. Besides, it can reveal how specific lexical items, as well as grammatical structures are being employed by Western media to distort the notion of impartiality.


Temática ◽  
2017 ◽  
Vol 13 (11) ◽  
Author(s):  
Maria Aparecida Ramos da Silva ◽  
Isa De Oliveira Teixeira

Este artigo objetiva analisar a relação entre o Brasil e a violência retratada pelo website do jornal The New York Times, tendo como contexto os jogos da Rio 2016. Considerando a questão da violência como um estereótipo frequentemente relacionado ao Brasil pelo imaginário estrangeiro. Enquanto metodologia foi adotada a análise de conteúdo com base nos conceitos de Laurence Bardin, que guiaram para a conclusão de que a publicação de Nova Iorque ao invés de trazer novos conceitos que alterassem a genérica visão estrangeira sobre o país reforçou o velho estereótipo de um Brasil violento.Palavras-chave: Brasil. Violência. The New York Times. Rio 2016. Estereótipo


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