The Construction of Cultural Consensus Models to Characterize Ethnogeological Knowledge

Geoheritage ◽  
2020 ◽  
Vol 12 (3) ◽  
Author(s):  
Angel A. Garcia ◽  
Steven Semken ◽  
Elizabeth Brandt
Author(s):  
Rita Kiki Edozie

A movement for “non-Western democracy” has emerged from a world frustrated with the inability of liberal democracy and neoliberal globalization to achieve conflict resolution, economic justice, and cultural self-determination and consensus, especially in developing world contexts. Underscoring its decentralized ethnic structures and social movements, which have developed consensual democracy mechanisms and models to address the problems and opportunities that come with democratization, this chapter presents Nigeria as a case study of non-Western democracy. The chapter chronicles Nigeria’s evolving and transformational intersections of culture, democracy, and ethnic community in ways that inform a contemporary understanding of the ongoing pressures relayed by the country’s ethnic social movements and struggles, its consociational revisions to liberal democracy, and its invocation of decentralized, cultural consensus models. The conclusion reveals how these processes underlay the distinctiveness, challenges, and opportunities confronting Nigerian democracy and analyzes them in the context of a contemporary debate about political restructuring.


2017 ◽  
Vol 32 (2) ◽  
pp. 466-476 ◽  
Author(s):  
K.A.I. Nekaris ◽  
Sharon McCabe ◽  
Denise Spaan ◽  
Muhammad Imron Ali ◽  
Vincent Nijman

2010 ◽  
Vol 1 ◽  
pp. 15-18 ◽  
Author(s):  
C. Scott Smith ◽  
Magdalena Morris ◽  
Francine Langois-Winkle ◽  
William Hill ◽  
Chris Francovich

Field Methods ◽  
2021 ◽  
pp. 1525822X2199216
Author(s):  
Lesley Jo Weaver ◽  
Nicole Henderson ◽  
Craig Hadley

Food insecurity (FI) is often assessed through experienced-based measures, which address the number and extent of coping strategies people employ. Coping indices are limited because, methodologically, they presuppose that people engage coping strategies uniformly. Ethnographic work suggests that subgroups experience FI quite differently, meaning that coping strategies might also vary within a population. Thus, whether people actually agree on FI coping behaviors is an open question. This article describes methods used to test whether there was a culturally agreed on set of coping behaviors around FI in rural Brazilian majority-female heads of household, and to detect patterned subgroup variation in that agreement. We used cultural consensus and residual agreement analyses on freelist and rating exercise data. This process could be applied as a first step in developing experience-based measures of FI sensitive to intragroup variation, or to identify key variables to guide qualitative analyses.


2020 ◽  
Vol 28 (1) ◽  
pp. 9-40
Author(s):  
Ryoko Okamura

Abstract This article examines the relationship between the Japanese American redress movement and the oral interviews of two Japanese immigrant women, known as Issei women. Focusing on the shared images of Issei women in the Japanese American community and the perspectives and self-representations of the interviewees in the oral interviews, it explores how cultural consensus produced stereotypical, collective images of Issei women as submissive, persevering, and quiet persons. As the redress movement progressed in the 1960s to the 1980s, the Japanese American community conducted oral history projects to preserve memories and legacies of their wartime experiences. There are dissimilarities between the original audio recordings and the published transcripts regarding the perspectives of Issei women. This article shows how the community’s desire to preserve idealized images of Issei men and women reduced the accuracy and nuances in the women’s self-representations and the complexities of family relations. Also, contrary to the collective images, Issei women demonstrated how they were independent, assertive, and open individuals expressing their perspectives, complicated emotions, and importance in the family.


1988 ◽  
Vol 14 (2) ◽  
pp. 223-243 ◽  
Author(s):  
Catharine R. Stimpson
Keyword(s):  

Author(s):  
Andrzej Wilczyński ◽  
Adrian Widłak

Data integration and fast effective data processing are the primary challenges in today’s high-performance computing systems used for Big Data processing and analysis in practical scenarios. Blockchain (BC) is a hot, modern technology that ensures high security of data processes stored in highly distributed networks and ICT infrastructures. BC enables secure data transfers in distributed systems without the need for all operations and processes in the network to be initiated and monitored by any central authority (system manager). This paper presents the background of a generic architectural model of a BC system and explains the concept behind the consensus models used in BC transactions. Security is the main aspect of all defined operations and BC nodes. The paper presents also specific BC use cases to illustrate the performance of the system in practical scenarios..


2021 ◽  
Author(s):  
Moritz Platt ◽  
Francesco Pierangeli

The consumption of electrical energy is a requisite for ‘proof-of-work’, a class of consensus protocols for decentralised systems. ‘Ethereum’ and ‘Bitcoin’, along with various other cryptocurrencies, use implementations of such a consensus protocol. Among experts, the vast energy demand associated with the rising popularity of cryptocurrencies and the potential impact on climate change have been discussed extensively. It is, however, unclear what attitudes the users of cryptocurrencies themselves have towards the consequences of its growing energy demand. The proposed study aims to answer this question through survey research, using ‘Bitcoin’ as an archetype of a proof-of-work cryptocurrency. Conducting the study will reveal whether cryptocurrency users themselves consider their energy needs to be problematic, and which stakeholders they hold accountable to reduce consumption. The outcome can provide a theoretical grounding in social science for the ongoing implementation of alternative consensus models, for example in the context of the ‘Eth2’ upgrade of the ‘Ethereum’ blockchain.


2016 ◽  
Vol 24 (3) ◽  
pp. 481-487 ◽  
Author(s):  
Ahmed Allam ◽  
Peter J Schulz ◽  
Michael Krauthammer

Background: As the Internet becomes the number one destination for obtaining health-related information, there is an increasing need to identify health Web pages that convey an accurate and current view of medical knowledge. In response, the research community has created multicriteria instruments for reliably assessing online medical information quality. One such instrument is DISCERN, which measures health Web page quality by assessing an array of features. In order to scale up use of the instrument, there is interest in automating the quality evaluation process by building machine learning (ML)-based DISCERN Web page classifiers. Objective: The paper addresses 2 key issues that are essential before constructing automated DISCERN classifiers: (1) generation of a robust DISCERN training corpus useful for training classification algorithms, and (2) assessment of the usefulness of the current DISCERN scoring schema as a metric for evaluating the performance of these algorithms. Methods: Using DISCERN, 272 Web pages discussing treatment options in breast cancer, arthritis, and depression were evaluated and rated by trained coders. First, different consensus models were compared to obtain a robust aggregated rating among the coders, suitable for a DISCERN ML training corpus. Second, a new DISCERN scoring criterion was proposed (features-based score) as an ML performance metric that is more reflective of the score distribution across different DISCERN quality criteria. Results: First, we found that a probabilistic consensus model applied to the DISCERN instrument was robust against noise (random ratings) and superior to other approaches for building a training corpus. Second, we found that the established DISCERN scoring schema (overall score) is ill-suited to measure ML performance for automated classifiers. Conclusion: Use of a probabilistic consensus model is advantageous for building a training corpus for the DISCERN instrument, and use of a features-based score is an appropriate ML metric for automated DISCERN classifiers. Availability: The code for the probabilistic consensus model is available at https://bitbucket.org/A_2/em_dawid/.


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