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<oembed><version>1.0</version><provider_name>CESI LINEACT</provider_name><provider_url>https://lineact.cesi.fr/en/</provider_url><author_name>Webmaster</author_name><author_url>https://lineact.cesi.fr/en/cv-chercheurs/plecostomus/</author_url><title>Improving Causality in Interpretable Video Retrieval - CESI LINEACT</title><type>rich</type><width>600</width><height>338</height><html>&lt;blockquote class="wp-embedded-content" data-secret="p9EyWILcdi"&gt;&lt;a href="https://lineact.cesi.fr/en/publications/improving-causality-in-interpretable-video-retrieval/"&gt;Improving Causality in Interpretable Video Retrieval&lt;/a&gt;&lt;/blockquote&gt;&lt;iframe sandbox="allow-scripts" security="restricted" src="https://lineact.cesi.fr/en/publications/improving-causality-in-interpretable-video-retrieval/embed/#?secret=p9EyWILcdi" width="600" height="338" title="&#x201C;Improving Causality in Interpretable Video Retrieval&#x201D; &#x2014; CESI LINEACT" data-secret="p9EyWILcdi" frameborder="0" marginwidth="0" marginheight="0" scrolling="no" class="wp-embedded-content"&gt;&lt;/iframe&gt;&lt;script&gt;
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</html><description>This paper focuses on the causal relation between the detection scores of concept (or tag) classifiers and the ranking decisions based on these scores, paving the way for these tags to be used in the visual explanations. We first define a measure for quantifying a causality on a set of tags, typically those involved in [&hellip;]</description></oembed>
