Muso

Directory About
Continue with Google
Continue with with Facebook

Top Related Posts

Kaunas
Alytus
Lithuania
Vilnius
Marijampolė
Telšiai
Utena
Panevėžys
Klaipėda
Konstantinovo

Recent Logins

View Members Directory

Tadhg Kelleher
Last login: 23 hours ago
Comments: 0

Eileen Lally
Last login: 2 weeks ago
Comments: 0

Özkan Konu
Last login: 1 month ago
Comments: 0

Anne Marie Bevan
Last login: 1 month ago
Comments: 0

Kevin Greene
Last login: 1 month ago
Comments: 0

Seán Millar
Last login: 1 month ago
Comments: 0

Šiauliai

Loading Graph...
Press Spacebar to toggle layout
Join the conversation

💬 Know something?

Sign in to leave a note, add a photo, or make a connection.

Continue with Google Continue with Facebook

Keep Muso free

Muso is built by one person, for the love of it. no investors — just your support.

€10
Covers an hour of research
Most popular
€25
Keeps the archive running
€50
Funds a full week of work
✎ Enter my own amount
€5
per month · cancel any time

You'll confirm the amount on the next screen

Donate €25 →
Secure checkout via Stripe  ·  No account needed

Related Images

Telšiai
Panevėžys
Klaipėda
Marijampolė
Utena
Kaunas
Vilnius
Tauragė
Alytus

Analyzing Network Connections...

Loading Map...

Nearest Locations

  • 📍
    Frenkelio vila0.8 km away
  • Thumbnail for Lithuanian Soviet Socialist Republic
    Lithuanian Soviet Socialist Republic64.0 km away
  • Thumbnail for Telšiai
    Telšiai66.7 km away
  • Thumbnail for Panevėžys
    Panevėžys69.2 km away
  • Thumbnail for Duchy of Courland and Semigallia
    Duchy of Courland and Semigallia82.5 km away

Network Profile

Overall Strength
i
0.72% of network
(2.2K)
Strength Breakdown
  • This Post (0.72%)
  • Vilnius (4.32%)
  • Panevėžys (2.16%)
  • Alytus (0.72%)
  • Kaunas (0.72%)
  • Klaipėda (0.72%)
  • Marijampolė (0.72%)
  • Tauragė (0.72%)
  • Telšiai (0.72%)
  • Utena (0.72%)
  • Konstantinovo (0.72%)
Dominant nodes (excluded from chart)
Lithuania 87.05%
Influence Score
i
6.90% of network
(4.5)
Influence Breakdown
  • This Post (6.90%)
  • Panevėžys (20.69%)
  • Vilnius (10.34%)
  • Lithuania (6.90%)
  • Alytus (6.90%)
  • Kaunas (6.90%)
  • Klaipėda (6.90%)
  • Marijampolė (6.90%)
  • Tauragė (6.90%)
  • Telšiai (6.90%)
  • Utena (6.90%)
  • Konstantinovo (6.90%)
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 11 direct neighbours)
Network_Strength (CV) = Base_PV * (Neighbour_1_PV * Neighbour_2_PV * ...)
                         = 1 *
                           ( 3 [Panevėžys] *
                            6 [Vilnius] *
                            121 [Lithuania] *
                            1 [Alytus] *
                            1 [Kaunas] *
                            1 [Klaipėda] *
                            1 [Marijampolė] *
                            1 [Tauragė] *
                            1 [Telšiai] *
                            1 [Utena] *
                            1 [Konstantinovo]
                           )

                         = 2.2K

Network_Influence (TV) = Base_IV * (Neighbour_1_IV * Neighbour_2_IV * ...)
                         = 1 *
                           ( 3 [Panevėžys] *
                            1.5 [Vilnius] *
                            1 [Lithuania] *
                            1 [Alytus] *
                            1 [Kaunas] *
                            1 [Klaipėda] *
                            1 [Marijampolė] *
                            1 [Tauragė] *
                            1 [Telšiai] *
                            1 [Utena] *
                            1 [Konstantinovo]
                           )

                         = 4.5
Outbound 1 Tags on post
Inbound 1 Posts tagging this
Connections 11 Total nodes
Base Node Strength 1
Base Node Influence 1
Strength Share (vs Direct Neighbours)
0.72% (2.2K overall)
  • This Post (0.72%)
  • Vilnius (4.32%)
  • Panevėžys (2.16%)
  • Alytus (0.72%)
  • Kaunas (0.72%)
  • Klaipėda (0.72%)
  • Marijampolė (0.72%)
  • Tauragė (0.72%)
  • Telšiai (0.72%)
  • Utena (0.72%)
  • Konstantinovo (0.72%)
Dominant nodes (excluded from chart)
Lithuania 87.05%
Influence Share (vs Direct Neighbours)
6.90% (4.5 overall)
  • This Post (6.90%)
  • Panevėžys (20.69%)
  • Vilnius (10.34%)
  • Lithuania (6.90%)
  • Alytus (6.90%)
  • Kaunas (6.90%)
  • Klaipėda (6.90%)
  • Marijampolė (6.90%)
  • Tauragė (6.90%)
  • Telšiai (6.90%)
  • Utena (6.90%)
  • Konstantinovo (6.90%)

Connected Network Hierarchy

Sort list by:
Top Network Boosters (Highest Multipliers)
Panevėžys ↗
Str: 3Inf: 3
Vilnius ↗
Str: 6Inf: 1.5
Lithuania ↗
Str: 121Inf: 1
Alytus ↗
Str: 1Inf: 1
Kaunas ↗
Str: 1Inf: 1
Klaipėda ↗
Str: 1Inf: 1
Marijampolė ↗
Str: 1Inf: 1
Tauragė ↗
Str: 1Inf: 1
Telšiai ↗
Str: 1Inf: 1
Utena ↗
Str: 1Inf: 1
Konstantinovo ↗
Str: 1Inf: 1
Weakest Connections (Lowest Multipliers)
Konstantinovo ↗
Str: 1Inf: 1
Utena ↗
Str: 1Inf: 1
Telšiai ↗
Str: 1Inf: 1
Tauragė ↗
Str: 1Inf: 1
Marijampolė ↗
Str: 1Inf: 1
Klaipėda ↗
Str: 1Inf: 1
Kaunas ↗
Str: 1Inf: 1
Alytus ↗
Str: 1Inf: 1
Lithuania ↗
Str: 121Inf: 1
Vilnius ↗
Str: 6Inf: 1.5
Panevėžys ↗
Str: 3Inf: 3

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

Outbound Tags (1)
lithuania
Inbound Posts (1)
Lithuania
Last calculated: Jun 21, 3:23 PM
Šiauliai, Siauliai County, Lithuania33

Related Content

Locations

  • Konstantinovo

Nations

  • Lithuania

Regionals

  • Tauragė
  • Telšiai
  • Utena
  • Alytus
  • Vilnius
  • Kaunas
  • Klaipėda
  • Marijampolė
  • Panevėžys