evaluating-litigation-driven-catalysts
Assesses litigation outcome impact with settlement probability, damage range estimation, and stock price sensitivity analysis. Use when evaluating litigation catalysts, modeling legal outcomes, or analyzing litigation-driven opportunities.
Best use case
evaluating-litigation-driven-catalysts is best used when you need a repeatable AI agent workflow instead of a one-off prompt.
Assesses litigation outcome impact with settlement probability, damage range estimation, and stock price sensitivity analysis. Use when evaluating litigation catalysts, modeling legal outcomes, or analyzing litigation-driven opportunities.
Teams using evaluating-litigation-driven-catalysts should expect a more consistent output, faster repeated execution, less prompt rewriting.
When to use this skill
- You want a reusable workflow that can be run more than once with consistent structure.
When not to use this skill
- You only need a quick one-off answer and do not need a reusable workflow.
- You cannot install or maintain the underlying files, dependencies, or repository context.
Installation
Claude Code / Cursor / Codex
Manual Installation
- Download SKILL.md from GitHub
- Place it in
.claude/skills/evaluating-litigation-driven-catalysts/SKILL.mdinside your project - Restart your AI agent — it will auto-discover the skill
How evaluating-litigation-driven-catalysts Compares
| Feature / Agent | evaluating-litigation-driven-catalysts | Standard Approach |
|---|---|---|
| Platform Support | Not specified | Limited / Varies |
| Context Awareness | High | Baseline |
| Installation Complexity | Unknown | N/A |
Frequently Asked Questions
What does this skill do?
Assesses litigation outcome impact with settlement probability, damage range estimation, and stock price sensitivity analysis. Use when evaluating litigation catalysts, modeling legal outcomes, or analyzing litigation-driven opportunities.
Where can I find the source code?
You can find the source code on GitHub using the link provided at the top of the page.
SKILL.md Source
# Evaluating Litigation Driven Catalysts Assesses litigation outcome impact with settlement probability, damage range estimation, and stock price sensitivity analysis. ## When To Use - A public company faces material pending litigation (securities fraud, patent infringement, antitrust, product liability, government enforcement) and you need to model the investment implications - Evaluating an event-driven or special situations position where a legal outcome is the primary catalyst for price movement - Sizing the asymmetry between market-implied litigation discount and your independent estimate of probable outcomes - Screening activist targets where litigation resolution could unlock value (e.g., settlement removes overhang, judgment triggers buyback capacity) ## Inputs To Gather - **Case filings and docket**: complaint, key motions, court rulings, scheduling orders, and trial date [VERIFY jurisdiction and current procedural posture] - **Company financials**: market cap, enterprise value, cash position, insurance coverage, and balance sheet capacity to absorb adverse judgment - **Comparable settlements/verdicts**: prior outcomes in the same area of law, same jurisdiction, or involving the same plaintiff's counsel - **Analyst and market data**: current stock price, implied volatility, options skew, and any sell-side litigation-adjusted price targets - **Expert or counsel commentary**: law firm memos, litigation analytics platforms (Lex Machina, Docket Alarm), or expert depositions indicating likely outcome range - **Timeline markers**: discovery cutoff, summary judgment deadline, trial date, appeal windows ## Workflow 1. **Classify the litigation type and stage** — Determine whether the case is securities class action, patent, antitrust, regulatory enforcement, mass tort, or other. Identify current procedural phase (pre-discovery, post-class-certification, summary judgment briefing, trial, appeal). Stage drives both probability calibration and time-to-resolution. 2. **Estimate outcome probabilities** — Build a discrete probability tree with at least three branches: - Dismissal / defendant win (assign probability based on motion-to-dismiss success rates for this case type [VERIFY against jurisdiction-specific data]) - Settlement (most frequent resolution — calibrate using comparable case data, median settlement-to-damages ratios) - Plaintiff verdict at trial (use base rates; e.g., securities class actions reach trial <5% of the time) - Assign sub-branches if partial outcomes are plausible (e.g., some claims survive, others dismissed) 3. **Estimate damage ranges per branch** — For each non-dismissal outcome: - Low / base / high damage estimate anchored to statutory frameworks, expert reports, and comparable awards - Net-of-insurance recovery (confirm D&O or other policy limits and retention layers [VERIFY policy terms if available]) - Tax treatment of settlement payments (deductible vs. non-deductible penalties) [VERIFY under IRC and relevant state law] 4. **Calculate expected litigation cost** — Probability-weighted expected value across all branches. Express as total dollar cost, per-share cost, and percentage of current market cap. 5. **Run stock price sensitivity analysis** — Model share price impact under each branch: - Overhang removal premium: estimate the re-rating if litigation resolves favorably (compare multiples to peers without litigation drag) - Adverse scenario: model dilution if company raises capital, or credit impact if judgment impairs balance sheet - Time-value adjustment: discount delayed outcomes to present value using appropriate rate 6. **Assess market pricing vs. your estimate** — Compare your expected litigation cost to the implied discount in the current stock price. Derive the "litigation mispricing" — the gap between your probability-weighted outcome and what the market appears to price. Confirm with options market signals (put skew, event vol). 7. **Identify key catalysts and decision points** — Map upcoming dates that will update probabilities: class certification ruling, Markman hearing, summary judgment order, mediation sessions, trial commencement. Flag which events have binary risk and which are incremental. ## Output Produce a **Litigation Catalyst Evaluation Report** containing: - **Executive summary**: one-paragraph thesis on whether the litigation creates an investable asymmetry - **Case overview table**: parties, claims, jurisdiction, judge, procedural posture, next key date - **Probability tree**: visual or tabular display of outcome branches with assigned probabilities and rationale - **Damage range matrix**: low / base / high estimates per outcome branch, net of insurance, with per-share translation - **Expected value calculation**: probability-weighted cost and per-share impact - **Sensitivity table**: stock price under each scenario (dismissal, settlement at various multiples, adverse verdict) - **Market-implied vs. estimated discount**: quantified mispricing with supporting data - **Catalyst calendar**: timeline of upcoming inflection points with expected probability updates - **Risk factors**: key assumptions that, if wrong, most change the conclusion (e.g., insurance coverage dispute, judge reassignment, legislative change) ## Quality Checks - Probabilities across all branches sum to 100% - Damage estimates are anchored to at least two comparable cases or statutory frameworks, not invented - Per-share math reconciles with share count (diluted) and market cap used - Insurance offset is explicitly stated and sourced, not assumed - All jurisdiction-dependent assumptions (statute of limitations, damages caps, fee-shifting rules) are marked [VERIFY] - Time-to-resolution estimate is consistent with the court's historical docket pace - Report distinguishes between litigation risk (probability of loss) and litigation exposure (magnitude of loss) — both are quantified separately - Sensitivity analysis includes at least one scenario where the position thesis is wrong
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