2017
DOI: 10.1016/j.envint.2017.02.008
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Bridging science and traditional knowledge to assess cumulative impacts of stressors on ecosystem health

Abstract: Cumulative environmental impacts driven by anthropogenic stressors lead to disproportionate effects on indigenous communities that are reliant on land and water resources. Understanding and counteracting these effects requires knowledge from multiple sources. Yet the combined use of Traditional Knowledge (TK) and Scientific Knowledge (SK) has both technical and philosophical hurdles to overcome, and suffers from inherently imbalanced power dynamics that can disfavour the very communities it intends to benefit.… Show more

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Cited by 118 publications
(104 citation statements)
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“…), including in the harnessing of collective local ecological knowledge in groups without a strong numerical background or with different knowledge systems (Mantyka‐Pringle et al. ). More research is also required to establish who should be consulted, the required number of experts, methods for combining judgments, techniques for training and feedback, and tools for independent verification of expert judgments (Martin et al.…”
Section: Collective Intelligence In Conservationmentioning
confidence: 99%
See 1 more Smart Citation
“…), including in the harnessing of collective local ecological knowledge in groups without a strong numerical background or with different knowledge systems (Mantyka‐Pringle et al. ). More research is also required to establish who should be consulted, the required number of experts, methods for combining judgments, techniques for training and feedback, and tools for independent verification of expert judgments (Martin et al.…”
Section: Collective Intelligence In Conservationmentioning
confidence: 99%
“…Despite successful applications in, for example, threatened species assessments (McBride et al 2012b), prioritizing management strategies (e.g., Carwardine et al 2019), risk assessments (Smith et al 2015), and estimating population trends (Adams-Hosking et al 2016), most researchers do not use a structured approach (Drescher & Edwards 2019). Expert-elicitation protocols require testing in a wider range of environmental decision making (Hemming et al 2017), including in the harnessing of collective local ecological knowledge in groups without a strong numerical background or with different knowledge systems (Mantyka-Pringle et al 2017). More research is also required to establish who should be consulted, the required number of experts, methods for combining judgments, techniques for training and feedback, and tools for independent verification of expert judgments (Martin et al 2012).…”
Section: Collective Intelligence In Conservationmentioning
confidence: 99%
“…Representative BBN applications in stream health modelling include the evaluation of cumulative environmental impacts of multiple stressors on ecosystem health using traditional and scientific knowledge (Mantyka-Pringle et al, 2017). The study incorporated biotic factors describing wildlife health, food webs, wildlife populations, fish health, and macroinvertebrate metrics (density, richness, and diversity), among others.…”
Section: Bayesian Belief Networkmentioning
confidence: 99%
“…Alternatively, there might be overlap between services types, as people cannot easily distinguish between them (Plieninger et al 2013). It demonstrates the challenges related with the attempts of combining traditional and scientific knowledge (Mantyka-Pringle et al 2017) showing the importance of both types of knowledge and the need for studies enabling researchers to build bridges between them.…”
Section: Identification Of the Most Important Ecosystem Servicesmentioning
confidence: 99%