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social-graph-ranker

by @affaan-mv
4.4(7)

ソーシャルグラフを分析し、紹介価値でランク付けし、高価値なコネクターと最短パスを特定し、人脈拡大戦略を最適化します。

crmsales-automationlead-generationb2b-salesGitHub
インストール方法
npx skills add affaan-m/everything-claude-code --skill social-graph-ranker
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Before / After 効果比較

1
使用前

直感で連絡先を選び、紹介価値を評価できず、大量の無効なコミュニケーションが発生し、コンバージョン率が 5% 未満

使用後

グラフ分析に基づきブリッジノードと高価値パスを特定し、主要な意思決定者を正確に特定することで、コンバージョン率が 25% に向上

SKILL.md

social-graph-ranker

Social Graph Ranker

Canonical weighted graph-ranking layer for network-aware outreach.

Use this when the user needs to:

  • rank existing mutuals or connections by intro value

  • map warm paths to a target list

  • measure bridge value across first- and second-order connections

  • decide which targets deserve warm intros versus direct cold outreach

  • understand the graph math independently from lead-intelligence or connections-optimizer

When To Use This Standalone

Choose this skill when the user primarily wants the ranking engine:

  • "who in my network is best positioned to introduce me?"

  • "rank my mutuals by who can get me to these people"

  • "map my graph against this ICP"

  • "show me the bridge math"

Do not use this by itself when the user really wants:

  • full lead generation and outbound sequencing -> use lead-intelligence

  • pruning, rebalancing, and growing the network -> use connections-optimizer

Inputs

Collect or infer:

  • target people, companies, or ICP definition

  • the user's current graph on X, LinkedIn, or both

  • weighting priorities such as role, industry, geography, and responsiveness

  • traversal depth and decay tolerance

Core Model

Given:

  • T = weighted target set

  • M = your current mutuals / direct connections

  • d(m, t) = shortest hop distance from mutual m to target t

  • w(t) = target weight from signal scoring

Base bridge score:

B(m) = Σ_{t ∈ T} w(t) · λ^(d(m,t) - 1)

Where:

  • λ is the decay factor, usually 0.5

  • a direct path contributes full value

  • each extra hop halves the contribution

Second-order expansion:

B_ext(m) = B(m) + α · Σ_{m' ∈ N(m) \\ M} Σ_{t ∈ T} w(t) · λ^(d(m',t))

Where:

  • N(m) \\ M is the set of people the mutual knows that you do not

  • α discounts second-order reach, usually 0.3

Response-adjusted final ranking:

R(m) = B_ext(m) · (1 + β · engagement(m))

Where:

  • engagement(m) is normalized responsiveness or relationship strength

  • β is the engagement bonus, usually 0.2

Interpretation:

  • Tier 1: high R(m) and direct bridge paths -> warm intro asks

  • Tier 2: medium R(m) and one-hop bridge paths -> conditional intro asks

  • Tier 3: low R(m) or no viable bridge -> direct outreach or follow-gap fill

Scoring Signals

Weight targets before graph traversal with whatever matters for the current priority set:

  • role or title alignment

  • company or industry fit

  • current activity and recency

  • geographic relevance

  • influence or reach

  • likelihood of response

Weight mutuals after traversal with:

  • number of weighted paths into the target set

  • directness of those paths

  • responsiveness or prior interaction history

  • contextual fit for making the intro

Workflow

  • Build the weighted target set.

  • Pull the user's graph from X, LinkedIn, or both.

  • Compute direct bridge scores.

  • Expand second-order candidates for the highest-value mutuals.

  • Rank by R(m).

  • Return:

best warm intro asks

  • conditional bridge paths

  • graph gaps where no warm path exists

Output Shape

SOCIAL GRAPH RANKING
====================

Priority Set:
Platforms:
Decay Model:

Top Bridges
- mutual / connection
  base_score:
  extended_score:
  best_targets:
  path_summary:
  recommended_action:

Conditional Paths
- mutual / connection
  reason:
  extra hop cost:

No Warm Path
- target
  recommendation: direct outreach / fill graph gap

Related Skills

  • lead-intelligence uses this ranking model inside the broader target-discovery and outreach pipeline

  • connections-optimizer uses the same bridge logic when deciding who to keep, prune, or add

  • brand-voice should run before drafting any intro request or direct outreach

  • x-api provides X graph access and optional execution paths

Weekly Installs502Repositoryaffaan-m/everyt…ude-codeGitHub Stars152.8KFirst Seen13 days agoSecurity AuditsGen Agent Trust HubPassSocketWarnSnykWarnInstalled oncodex466opencode445gemini-cli440cursor440antigravity440kimi-cli439

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統計データ

インストール数2.6K
評価4.4 / 5.0
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更新日2026年5月22日
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作成2026年4月14日
最終更新2026年5月22日