InDegree Analysis: Difference between revisions
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== Parameters == | == Parameters == | ||
$n$: number of pages | |||
$m$: number of hyperlinks | |||
$z$: # of topics/categories | |||
== Table of Algorithms == | == Table of Algorithms == | ||
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| [[The INDEGREE Algorithm (InDegree Analysis Link Analysis)|The INDEGREE Algorithm]] || 1997 || $O( | | [[The INDEGREE Algorithm (InDegree Analysis Link Analysis)|The INDEGREE Algorithm]] || 1997 || $O(mn)$ || $O(n)$ || Exact || Deterministic || [https://www.w3.org/People/Massimo/papers/quest_hypersearch.pdf Time] | ||
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Revision as of 08:24, 10 April 2023
Description
A simple heuristic that can be viewed as the predecessor of all Link Analysis Ranking algorithms is to rank the pages according to their popularity (also referred to as visibility (Marchiori 1997)). The popularity of a page is measured by the number of pages that link to this page. We refer to this algorithm as the InDegree algorithm, since it ranks pages according to their in-degree in the graph $G$. That is, for every node $i$, $a_i = |B(i)|$.
Related Problems
Related: Link Analysis
Parameters
$n$: number of pages
$m$: number of hyperlinks
$z$: # of topics/categories
Table of Algorithms
Name | Year | Time | Space | Approximation Factor | Model | Reference |
---|---|---|---|---|---|---|
The INDEGREE Algorithm | 1997 | $O(mn)$ | $O(n)$ | Exact | Deterministic | Time |
Time Complexity Graph
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Space Complexity Graph
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Time-Space Tradeoff
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