VOX Stock Analysis
Summary
Backtest Summary - VOX
Generated: 2025-09-24 06:42:20
π Buy & Hold Benchmark
Total Return: +1565.59%
Analysis Period: Long-term (Multi-year)
Date Range: {‘start’: Timestamp(‘2011-10-11 00:00:00’), ’end’: Timestamp(‘2025-09-23 00:00:00’), ‘days’: 5096}
This represents the return from buying at the start and holding until the end of the analysis period.
Performance Overview
| Strategy | Symbol | Total Return | 3M Return | 6M Return | 12M Return | 24M Return | Excess Return | Sharpe Ratio | Max Drawdown | Trades | Win Rate | Final Value |
|---|---|---|---|---|---|---|---|---|---|---|---|---|
| trend_momentum | VOX | 1442.30% | 13.1% | 19.7% | 48.9% | 146.8% | -123.29% | 0.82 | -34.15% | 56 | 50.00% | $1,542,300 |
| dow_theory | VOX | 0.00% | 0.0% | 0.0% | 0.0% | 0.0% | 0.00% | 0.00 | 0.00% | 0 | 0.00% | $100,000 |
| volume_confirmation | VOX | 1378.62% | 13.4% | 15.7% | 44.0% | 135.6% | -186.98% | 0.79 | -35.78% | 45 | 48.89% | $1,478,618 |
| bollinger_oscillators | VOX | 306.52% | 1.3% | 1.3% | 1.3% | 12.4% | -1259.07% | 0.51 | -52.01% | 55 | 49.09% | $406,522 |
| macd_divergence | VOX | 1565.59% | 13.4% | 22.0% | 60.4% | 222.6% | 0.00% | 0.00 | 0.00% | 1 | 0.00% | $1,665,595 |
| breakout_momentum | VOX | 594.15% | 11.6% | 8.4% | 35.4% | 128.5% | -971.45% | 0.56 | -50.05% | 42 | 50.00% | $694,149 |
| mean_reversion_multi_tf | VOX | 585.16% | 13.4% | 22.0% | 60.4% | 222.6% | -980.43% | 0.57 | -54.23% | 3 | 33.33% | $685,164 |
| relative_strength_rotation | VOX | 244.03% | 13.4% | 4.1% | 30.1% | 117.8% | -1321.56% | 0.35 | -54.30% | 57 | 49.12% | $344,034 |
| gap_trading | VOX | 1246.04% | 13.4% | 22.0% | 60.4% | 222.6% | -319.56% | 0.00 | 0.00% | 1 | 0.00% | $1,346,037 |
| volatility_expansion | VOX | 656.23% | 13.4% | 22.0% | 60.4% | 222.6% | -909.36% | 0.63 | -43.59% | 9 | 44.44% | $756,231 |
| momentum_kirkpatrick | VOX | 267.12% | 8.5% | 3.0% | 7.2% | 62.2% | -1298.47% | 0.42 | -31.03% | 154 | 50.00% | $367,122 |
Best Strategy: macd_divergence
- Symbol: VOX
- Total Return: 1565.59%
- Sharpe Ratio: 0.00
- Max Drawdown: 0.00%
- Final Portfolio Value: $1,665,595
Key Metrics
- Initial Capital: $100,000
- Analysis Date: 2025-09-24
- Portfolio Manager: Active (Extreme returns fix applied)
Period Analysis
This report includes period-based return analysis for the following timeframes:
- 3M Return: Performance over the last 3 months
- 6M Return: Performance over the last 6 months
- 12M Return: Performance over the last 12 months
- 24M Return: Performance over the last 24 months
Period-based analysis helps identify strategy behavior across different market conditions and time horizons.
Recent Trading Signals
π Today’s Signals (2025-09-24)
βͺ No new trading signals detected in today’s analysis.
π Most Recent Signals by Strategy
π΄ Trend Momentum: Last SELL on 2025-09-15
- π Total Confidence: 35.3%
- π’ Composite: 38.6%
- π΅ Conservative: 9.6%
- π΄ Aggressive: 33.5%
- π‘ Institutional: 48.7%
- π£ Quantitative: 45.9%
π’ Volume Confirmation: Last BUY on 2025-08-05
- π Total Confidence: 32.5%
- π’ Composite: 37.4%
- π΅ Conservative: 6.7%
- π΄ Aggressive: 32.4%
- π‘ Institutional: 42.0%
- π£ Quantitative: 43.9%
π’ Bollinger Oscillators: Last BUY on 2025-08-28
- π Total Confidence: 22.7%
- π’ Composite: 26.4%
- π΅ Conservative: 0.0%
- π΄ Aggressive: 21.7%
- π‘ Institutional: 32.7%
- π£ Quantitative: 32.6%
π’ Macd Divergence: Last BUY on 2016-11-22
- π Total Confidence: 25.7%
- π’ Composite: 7.8%
- π΅ Conservative: 16.3%
- π΄ Aggressive: 9.4%
- π‘ Institutional: 49.7%
- π£ Quantitative: 45.5%
π΄ Breakout Momentum: Last SELL on 2025-08-27
- π Total Confidence: 23.8%
- π’ Composite: 29.2%
- π΅ Conservative: 0.0%
- π΄ Aggressive: 24.5%
- π‘ Institutional: 30.9%
- π£ Quantitative: 34.6%
π’ Mean Reversion Multi Tf: Last BUY on 2019-10-01
- π Total Confidence: 17.8%
- π’ Composite: 24.4%
- π΅ Conservative: 0.0%
- π΄ Aggressive: 20.4%
- π‘ Institutional: 26.0%
- π£ Quantitative: 18.2%
π’ Relative Strength Rotation: Last BUY on 2025-07-28
- π Total Confidence: 20.1%
- π’ Composite: 22.9%
- π΅ Conservative: 0.0%
- π΄ Aggressive: 18.9%
- π‘ Institutional: 28.7%
- π£ Quantitative: 30.2%
π’ Gap Trading: Last BUY on 2023-12-22
- π Total Confidence: 24.4%
- π’ Composite: 6.2%
- π΅ Conservative: 15.0%
- π΄ Aggressive: 7.5%
- π‘ Institutional: 48.7%
- π£ Quantitative: 44.4%
π’ Volatility Expansion: Last BUY on 2022-07-05
- π Total Confidence: 22.5%
- π’ Composite: 29.3%
- π΅ Conservative: 0.0%
- π΄ Aggressive: 24.5%
- π‘ Institutional: 31.5%
- π£ Quantitative: 27.1%
π΄ Momentum Kirkpatrick: Last SELL on 2025-09-04
- π Total Confidence: 24.0%
- π’ Composite: 24.8%
- π΅ Conservative: 0.0%
- π΄ Aggressive: 20.4%
- π‘ Institutional: 36.4%
- π£ Quantitative: 38.3%
π How Confidence Is Calculated
Confidence percentages tell you how much to trust a trading signal based on the strategy’s historical performance.
π― Current Method: Composite (Balanced)
- Sharpe Ratio: Up to 20 points (risk-adjusted returns)
- Win Rate: Up to 30 points (percentage of profitable trades)
- Total Return: Up to 50 points (overall profitability)
π Available Confidence Methods:
- π’ Composite (Balanced): Current method - balanced approach for most traders
- π΅ Conservative (Risk-Averse): Emphasizes safety and downside protection
- π΄ Aggressive (Growth-Focused): Prioritizes high returns over risk
- π‘ Institutional (Modern Portfolio Theory): Professional fund management approach
- π£ Quantitative (Statistical): Mathematical and statistical measures
π― Confidence Levels:
- 70%+: Strong performer - trust this signal more
- 50-70%: Decent performer - moderate trust
- 30-50%: Weak performer - be cautious
- <30%: Poor performer - low trust
π‘ Signal Interpretation
- π’ BUY signals: Suggest potential upward price movement
- π΄ SELL signals: Suggest potential downward price movement
- βͺ HOLD signals: Suggest maintaining current position
- π Confidence: Higher percentages indicate stronger signal conviction
- π― CONSENSUS: Overall recommendation based on multiple strategy agreement
π Detailed Confidence Method Explanations
π’ Composite (Balanced) - Current Method
Formula: (SharpeΓ20) + (WinRateΓ30) + (ReturnΓ50)
Used by: Individual traders, retail investors
Why: Balanced approach that considers risk, consistency, and returns equally. Good for most trading styles.
Example: Strategy with 0.4 Sharpe, 60% win rate, 80% return = (0.4Γ20) + (0.6Γ30) + (0.8Γ50) = 66% confidence
π΅ Conservative (Risk-Averse)
Formula: (SharpeΓ25) + (WinRateΓ35) + (ReturnΓ40) - DrawdownPenalty + SafetyBonus
Used by: Pension funds, insurance companies, risk-averse investors
Why: Prioritizes capital preservation over growth. Heavily penalizes strategies with large drawdowns.
Key Features:
- Higher weight on consistency (win rate)
- Penalty for drawdowns >5%
- Bonus for low-risk strategies
- Caps returns at 50% to avoid overvaluing risky strategies
π΄ Aggressive (Growth-Focused)
Formula: (ReturnΓ60) + (SharpeΓ15) + (WinRateΓ25) + HighReturnBonus
Used by: Hedge funds, growth investors, aggressive traders
Why: Maximizes returns regardless of risk. Suitable for investors who can tolerate volatility.
Key Features:
- 60% weight on raw returns
- Lower weight on risk adjustment
- Bonus for strategies with >50% returns
- Allows returns up to 200% contribution
π‘ Institutional (Modern Portfolio Theory)
Formula: InfoRatio + Consistency + RiskAdjustedReturn + ReturnComponent + SignificanceBonus
Used by: Mutual funds, pension funds, institutional investors
Why: Based on academic finance theory and institutional requirements. Emphasizes statistical significance.
Key Features:
- Information ratio (like Sharpe but more robust)
- Return-to-drawdown ratio
- Bonus for statistically significant results (>100 trades)
- Follows modern portfolio theory principles
π£ Quantitative (Statistical)
Formula: CalmarRatio + SterlingRatio + WinRate + Return + SampleSize + StatisticalSignificance
Used by: Quantitative funds, algorithmic trading systems, research institutions
Why: Uses advanced statistical measures and mathematical optimization. Most rigorous approach.
Key Features:
- Calmar ratio (return/max drawdown)
- Sterling ratio (similar to Calmar)
- Sample size adjustment for statistical validity
- T-statistic proxy for significance testing
- Mathematical optimization of weights
ποΈ Financial Industry Context
Goldman Sachs: Uses similar multi-factor scoring for strategy selection
Renaissance Technologies: Employs statistical significance testing like our Quantitative method
Bridgewater: Emphasizes risk parity similar to our Conservative approach
AQR: Uses academic factors like our Institutional method
Two Sigma: Applies quantitative methods similar to our Statistical approach











































