Search alternatives:
significant rise » significant risk (Expand Search), significant role (Expand Search), significant cause (Expand Search)
significant i.e » significant inter (Expand Search), significant bias (Expand Search), significant gap (Expand Search)
i.e decrease » we decrease (Expand Search), sizes decrease (Expand Search), teer decrease (Expand Search)
rise based » risk based (Expand Search), urine based (Expand Search), noise based (Expand Search)
significant rise » significant risk (Expand Search), significant role (Expand Search), significant cause (Expand Search)
significant i.e » significant inter (Expand Search), significant bias (Expand Search), significant gap (Expand Search)
i.e decrease » we decrease (Expand Search), sizes decrease (Expand Search), teer decrease (Expand Search)
rise based » risk based (Expand Search), urine based (Expand Search), noise based (Expand Search)
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GO analysis of stage-salient genes in the order of decreasing significance (i.e, increasing p–value).
Published 2022“…<p>GO analysis of stage-salient genes in the order of decreasing significance (i.e, increasing p–value).</p>…”
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Sea-Level Rise Risk and Adaptation in Estuaries
Published 2024“…<p>This chapter provides an overview of sea-level rise (SLR) risks and adaptation in estuaries, with a focus on coastal flooding as one of the key coastal risks in estuaries, together with its interaction with wetlands and the emerging ideas around Nature-based solutions (NbS) and estuarine and habitat restoration. …”
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Randomized Input Sampling for Explanation (RISE).
Published 2025“…Using a Vision Transformer trained on the publicly available CAMELYON16 dataset comprising of 399 whole slide images of lymph node metastases of patients with breast cancer, we conducted a comparative analysis of a diverse range of state-of-the-art techniques for generating explanations through heatmaps, including Attention Rollout, Integrated Gradients, RISE, and ViT-Shapley. Our findings reveal that Attention Rollout and Integrated Gradients are prone to artifacts, while RISE and particularly ViT-Shapley generate more reliable and interpretable heatmaps. …”
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