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Analyzing Network Connections...

Network Profile

Overall Strength
i
0.47% of network
(2.37M)
Strength Breakdown
  • This Post (0.47%)
  • Will Patton (57.08%)
  • Burt Young (23.11%)
  • Amanda Plummer (11.79%)
  • Abigail Harm (7.55%)
Influence Score
i
20.00% of network
(1)
Influence Breakdown
  • This Post (20.00%)
  • Burt Young (20.00%)
  • Amanda Plummer (20.00%)
  • Will Patton (20.00%)
  • Abigail Harm (20.00%)
Direct Connections 2

Node & Network Details

How is this calculated?

The math continuously tracks how strongly this post is connected to the rest of the network. Every tag forms a 2-way link. The base stats determine personal node strength, and the pie charts below show this node's share against its direct neighbours.

// 1. Base variables (floored at 1 to prevent zero-multiplication math errors)
$inbound = max(1, 1) = 1
$outbound = max(1, 1) = 1

// 2. Node Base Values (Local connection strength)
Base_Strength (PV) = $inbound * $outbound = 1 * 1 = 1
Base_Influence (IV) = $inbound / $outbound = 1 / 1 = 1

// 3. Exponential Network Values (accumulating 4 direct neighbours)
Network_Strength (CV) = Base_PV * (Neighbour_1_PV * Neighbour_2_PV * ...)
                         = 1 *
                           ( 49 [Burt Young] *
                            25 [Amanda Plummer] *
                            121 [Will Patton] *
                            16 [Abigail Harm]
                           )

                         = 2.37M

Network_Influence (TV) = Base_IV * (Neighbour_1_IV * Neighbour_2_IV * ...)
                         = 1 *
                           ( 1 [Burt Young] *
                            1 [Amanda Plummer] *
                            1 [Will Patton] *
                            1 [Abigail Harm]
                           )

                         = 1
Outbound 1 Tags on post
Inbound 1 Posts tagging this
Connections 4 Total nodes
Base Node Strength 1
Base Node Influence 1
Strength Share (vs Direct Neighbours)
0.47% (2.37M overall)
  • This Post (0.47%)
  • Will Patton (57.08%)
  • Burt Young (23.11%)
  • Amanda Plummer (11.79%)
  • Abigail Harm (7.55%)
Influence Share (vs Direct Neighbours)
20.00% (1 overall)
  • This Post (20.00%)
  • Burt Young (20.00%)
  • Amanda Plummer (20.00%)
  • Will Patton (20.00%)
  • Abigail Harm (20.00%)

Connected Network Hierarchy

Sort list by:
Top Network Boosters (Highest Multipliers)
Burt Young ↗
Str: 49Inf: 1
Amanda Plummer ↗
Str: 25Inf: 1
Will Patton ↗
Str: 121Inf: 1
Abigail Harm ↗
Str: 16Inf: 1
Weakest Connections (Lowest Multipliers)
Abigail Harm ↗
Str: 16Inf: 1
Will Patton ↗
Str: 121Inf: 1
Amanda Plummer ↗
Str: 25Inf: 1
Burt Young ↗
Str: 49Inf: 1

Connection Health Audit (Red = broken 1-way link)

Outbound Tags (1)
Abigail Harm
Inbound Posts (1)
Abigail Harm
Last calculated: Jun 20, 12:32 AM
16

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