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  <title>Bookmarks tagged with: search,smallweb,programming</title>
  <updated>2026-06-24T01:46:10.699894Z</updated>
  <entry>
    <category label="smallweb" term="smallweb"/>
    <category label="webapp" term="webapp"/>
    <category label="data" term="data"/>
    <category label="data-science" term="data-science"/>
    <category label="programming" term="programming"/>
    <category label="search" term="search"/>
    <category label="search-engine" term="search-engine"/>
    <author>
      <name>cos</name>
      <uri>https://ln.ht/~cos</uri>
    </author>
    <content>In plain English, this service looks at which websites link to a particular target website, and then it ranks websites that are popular among those linking websites using a method commonly used in recommendation algorithms.

In technical jargon, it reinterprets the incident edges in the adjacency matrix as sparse high dimensional vector, and uses cosine similarity to find the nearest neighbors nodes within this feature-space.</content>
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    <id>https://explore2.marginalia.nu/</id>
    <title>Marginalia Similar Website Finder</title>
    <updated>2025-09-08T20:05:34Z</updated>
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