In den Scripts nach "Buy sell" suchen
ZenTrend Follower Signals (Backtest)Buy/Sell Entry signals based on the ZenTrend Follower indicator.
Entries are taken from the setup and trend breakout level, exits from the trailing stop loss.
Overextension and trend re-entry signals are ignored.
The indicator is linked below
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Stay calm, and happy trading!
More information on the indicator can be found below:
Altcoins StrategyBuy/Sell Altcoins strategy. Based on moving averages, divergences, price and volume
Buy SellKıvanc hocanın yazdığı 2 stop loss indikatörünün birleşmesi sonucu bulundu. Çalışma mantığını kullandıkça anlayacaksınızıdır.
Buy Sell signal by Spicytrader
Get on board before going to the moon !
Spicytrader instantly identifies when a potential pump or dump is beginning.
Compatible with Autoview bot
GET ACCESS : spicytrader.com
Buy/Sell Using MACD and ReversalsUsing the crossover of Signal Line and MACD line predict the reversals of trends in the chart.
Buy/Sell Ahmed Rashiedtrade with confidence good for both intra day and long term took me 2 yrs to finish it
MULTIPLE TIME-FRAME STRATEGY(TREND, MOMENTUM, ENTRY) Hey everyone, this is one strategy that I have found profitable over time. It is a multiple time frame strategy that utilizes 3 time-frames. Highest time-frame is the trend, medium time-frame is the momentum and short time-frame is the entry point.
Long Term:
- If closed candle is above entry then we are looking for longs, otherwise we are looking for shorts
Medium Term:
- If Stoch SmoothK is above or below SmoothK and the momentum matches long term trend then we look for entries.
Short Term:
- If a moving average crossover(long)/crossunder(short) occurs then place a trade in the direction of the trend.
Close Trade:
- Trade is closed when the Medium term SmoothK Crosses under/above SmoothD.
You can mess with the settings to get the best Profit Factor / Percent Profit that matches your plan.
Best of luck!
[STRATEGY][RS]MicuRobert EMA cross V2Great thanks Ricardo , watch this man . Start at 2014 December with 1000 euro.
Trend Strength Score (0-100) — MultiTFTrend Strength Score (0-100) — MultiTF
⚠️ EDUCATIONAL PURPOSE ONLY ⚠️
This indicator is provided for educational and informational purposes only. It is not intended as financial advice or a recommendation to buy or sell. Always do your own research and consider your risk tolerance before trading. Past performance does not guarantee future results.
🎯 Overview
Advanced multi-component trend analysis indicator that calculates a single composite trend strength score from 0-100, combining multiple proven technical analysis methods into one powerful tool. Perfect for traders who want a comprehensive view of market conditions at a glance.
✨ Key Features
🔢 Single Composite Score (0-100): Eliminates guesswork with a clear numerical rating
📱 Professional Market Info Table: Glass-effect overlay showing all component scores and values
🎨 Visual Signals: Buy/sell arrows, background coloring, and trend labels
⚡ Multi-Timeframe Analysis: Higher timeframe confirmation for stronger signals
🔔 Smart Alerts: Customizable threshold-based notifications
⚙️ Fully Configurable: Adjust weights, thresholds, and components to your strategy
🧮 Technical Components
8 Powerful Analysis Methods:
Moving Average Alignment — Price position, slope analysis, and MA relationships
ADX Trend Strength — Directional movement with strength measurement
RSI Momentum — Momentum analysis with directional bias
ATR Volatility — Volatility expansion detection
Volume Confirmation — Volume vs rolling average analysis
Market Structure — Break of Structure (BOS) and Change of Character (CHOCH) detection
Fair Value Gaps (FVG) — ICT-style imbalance gap identification
Multi-Timeframe Agreement — Higher timeframe trend confirmation
🎛️ Customization Options
Component Weights: Adjust importance of each analysis method
Threshold Settings: Set custom bullish/bearish levels (default: 70/30)
Moving Averages: Choose between SMA/EMA/DEMA with custom lengths
Timeframe Selection: Pick your higher timeframe for multi-TF analysis
Visual Controls: Toggle arrows, background colors, MA lines, and table display
Alert Configuration: Set up notifications for threshold crossings
📈 Use Cases
Trend Following: Identify strong trending conditions (Score >70)
Range Trading: Spot ranging markets (Score 30-70)
Entry Timing: Use arrows for potential entry points
Risk Management: Avoid trades in weak trend conditions (Score <30)
Multi-Timeframe Analysis: Confirm signals across different timeframes
🎨 Visual Elements
Market Info Table: Compact, professional display with excellent readability
Trend Strength Gauge: Visual bar showing current score
Background Coloring: Instant visual trend identification
Buy/Sell Arrows: Clear entry/exit signal markers
Dynamic Labels: Real-time score and trend direction
⚡ Performance Optimized
Minimal resource usage with efficient calculations
Smart pivot detection algorithms
Optimized request.security() calls for multi-timeframe data
Variable declaration optimization for faster execution
🔧 Recommended Settings
Daytrading: HTF=1H, MA=9/21, Fast response
Swing Trading: HTF=Daily, MA=20/50, Standard settings
Position Trading: HTF=Weekly, MA=50/100, Slower signals
💡 Pro Tips
Higher scores (>75) indicate very strong trends
Scores between 40-60 suggest ranging/choppy conditions
Use component breakdown in table to understand signal strength
Combine with price action for best results
Adjust weights based on your trading style and market conditions
🎓 Perfect For
Beginner traders wanting clear, numerical trend guidance
Experienced traders seeking comprehensive market analysis
Anyone wanting to combine multiple indicators into one tool
Traders who value clean, professional chart presentation
Transform your trading with this powerful, all-in-one trend analysis tool! 🚀
Educational Tool | Pine Script v6 | For Learning Purposes Only | Not Financial Advice
ULTIMATE TRADE [ULTIMATE TRADE V.5]🚀 Premium Trading Indicator – Accurate Buy/Sell Signals!
Apne trading ko next level par le jao hamare Custom Trading Indicator ke saath.
✅ Live Buy/Sell Signals
✅ Trend Direction
✅ Target & Stoploss Suggestion
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TRADE ORBIT: RSI Multi-Timeframe Background WITH BUY/SELL SIGNALGreen = all three RSI > 60
Red = all three RSI < 40
Blue = monthly & weekly > 61, daily < 60
Violet = monthly > 61, weekly & daily < 60
Yellow = everything else
Game Theory Trading StrategyGame Theory Trading Strategy: Explanation and Working Logic
This Pine Script (version 5) code implements a trading strategy named "Game Theory Trading Strategy" in TradingView. Unlike the previous indicator, this is a full-fledged strategy with automated entry/exit rules, risk management, and backtesting capabilities. It uses Game Theory principles to analyze market behavior, focusing on herd behavior, institutional flows, liquidity traps, and Nash equilibrium to generate buy (long) and sell (short) signals. Below, I'll explain the strategy's purpose, working logic, key components, and usage tips in detail.
1. General Description
Purpose: The strategy identifies high-probability trading opportunities by combining Game Theory concepts (herd behavior, contrarian signals, Nash equilibrium) with technical analysis (RSI, volume, momentum). It aims to exploit market inefficiencies caused by retail herd behavior, institutional flows, and liquidity traps. The strategy is designed for automated trading with defined risk management (stop-loss/take-profit) and position sizing based on market conditions.
Key Features:
Herd Behavior Detection: Identifies retail panic buying/selling using RSI and volume spikes.
Liquidity Traps: Detects stop-loss hunting zones where price breaks recent highs/lows but reverses.
Institutional Flow Analysis: Tracks high-volume institutional activity via Accumulation/Distribution and volume spikes.
Nash Equilibrium: Uses statistical price bands to assess whether the market is in equilibrium or deviated (overbought/oversold).
Risk Management: Configurable stop-loss (SL) and take-profit (TP) percentages, dynamic position sizing based on Game Theory (minimax principle).
Visualization: Displays Nash bands, signals, background colors, and two tables (Game Theory status and backtest results).
Backtesting: Tracks performance metrics like win rate, profit factor, max drawdown, and Sharpe ratio.
Strategy Settings:
Initial capital: $10,000.
Pyramiding: Up to 3 positions.
Position size: 10% of equity (default_qty_value=10).
Configurable inputs for RSI, volume, liquidity, institutional flow, Nash equilibrium, and risk management.
Warning: This is a strategy, not just an indicator. It executes trades automatically in TradingView's Strategy Tester. Always backtest thoroughly and use proper risk management before live trading.
2. Working Logic (Step by Step)
The strategy processes each bar (candle) to generate signals, manage positions, and update performance metrics. Here's how it works:
a. Input Parameters
The inputs are grouped for clarity:
Herd Behavior (🐑):
RSI Period (14): For overbought/oversold detection.
Volume MA Period (20): To calculate average volume for spike detection.
Herd Threshold (2.0): Volume multiplier for detecting herd activity.
Liquidity Analysis (💧):
Liquidity Lookback (50): Bars to check for recent highs/lows.
Liquidity Sensitivity (1.5): Volume multiplier for trap detection.
Institutional Flow (🏦):
Institutional Volume Multiplier (2.5): For detecting large volume spikes.
Institutional MA Period (21): For Accumulation/Distribution smoothing.
Nash Equilibrium (⚖️):
Nash Period (100): For calculating price mean and standard deviation.
Nash Deviation (0.02): Multiplier for equilibrium bands.
Risk Management (🛡️):
Use Stop-Loss (true): Enables SL at 2% below/above entry price.
Use Take-Profit (true): Enables TP at 5% above/below entry price.
b. Herd Behavior Detection
RSI (14): Checks for extreme conditions:
Overbought: RSI > 70 (potential herd buying).
Oversold: RSI < 30 (potential herd selling).
Volume Spike: Volume > SMA(20) x 2.0 (herd_threshold).
Momentum: Price change over 10 bars (close - close ) compared to its SMA(20).
Herd Signals:
Herd Buying: RSI > 70 + volume spike + positive momentum = Retail buying frenzy (red background).
Herd Selling: RSI < 30 + volume spike + negative momentum = Retail selling panic (green background).
c. Liquidity Trap Detection
Recent Highs/Lows: Calculated over 50 bars (liquidity_lookback).
Psychological Levels: Nearest round numbers (e.g., $100, $110) as potential stop-loss zones.
Trap Conditions:
Up Trap: Price breaks recent high, closes below it, with a volume spike (volume > SMA x 1.5).
Down Trap: Price breaks recent low, closes above it, with a volume spike.
Visualization: Traps are marked with small red/green crosses above/below bars.
d. Institutional Flow Analysis
Volume Check: Volume > SMA(20) x 2.5 (inst_volume_mult) = Institutional activity.
Accumulation/Distribution (AD):
Formula: ((close - low) - (high - close)) / (high - low) * volume, cumulated over time.
Smoothed with SMA(21) (inst_ma_length).
Accumulation: AD > MA + high volume = Institutions buying.
Distribution: AD < MA + high volume = Institutions selling.
Smart Money Index: (close - open) / (high - low) * volume, smoothed with SMA(20). Positive = Smart money buying.
e. Nash Equilibrium
Calculation:
Price mean: SMA(100) (nash_period).
Standard deviation: stdev(100).
Upper Nash: Mean + StdDev x 0.02 (nash_deviation).
Lower Nash: Mean - StdDev x 0.02.
Conditions:
Near Equilibrium: Price between upper and lower Nash bands (stable market).
Above Nash: Price > upper band (overbought, sell potential).
Below Nash: Price < lower band (oversold, buy potential).
Visualization: Orange line (mean), red/green lines (upper/lower bands).
f. Game Theory Signals
The strategy generates three types of signals, combined into long/short triggers:
Contrarian Signals:
Buy: Herd selling + (accumulation or down trap) = Go against retail panic.
Sell: Herd buying + (distribution or up trap).
Momentum Signals:
Buy: Below Nash + positive smart money + no herd buying.
Sell: Above Nash + negative smart money + no herd selling.
Nash Reversion Signals:
Buy: Below Nash + rising close (close > close ) + volume > MA.
Sell: Above Nash + falling close + volume > MA.
Final Signals:
Long Signal: Contrarian buy OR momentum buy OR Nash reversion buy.
Short Signal: Contrarian sell OR momentum sell OR Nash reversion sell.
g. Position Management
Position Sizing (Minimax Principle):
Default: 1.0 (10% of equity).
In Nash equilibrium: Reduced to 0.5 (conservative).
During institutional volume: Increased to 1.5 (aggressive).
Entries:
Long: If long_signal is true and no existing long position (strategy.position_size <= 0).
Short: If short_signal is true and no existing short position (strategy.position_size >= 0).
Exits:
Stop-Loss: If use_sl=true, set at 2% below/above entry price.
Take-Profit: If use_tp=true, set at 5% above/below entry price.
Pyramiding: Up to 3 concurrent positions allowed.
h. Visualization
Nash Bands: Orange (mean), red (upper), green (lower).
Background Colors:
Herd buying: Red (90% transparency).
Herd selling: Green.
Institutional volume: Blue.
Signals:
Contrarian buy/sell: Green/red triangles below/above bars.
Liquidity traps: Red/green crosses above/below bars.
Tables:
Game Theory Table (Top-Right):
Herd Behavior: Buying frenzy, selling panic, or normal.
Institutional Flow: Accumulation, distribution, or neutral.
Nash Equilibrium: In equilibrium, above, or below.
Liquidity Status: Trap detected or safe.
Position Suggestion: Long (green), Short (red), or Wait (gray).
Backtest Table (Bottom-Right):
Total Trades: Number of closed trades.
Win Rate: Percentage of winning trades.
Net Profit/Loss: In USD, colored green/red.
Profit Factor: Gross profit / gross loss.
Max Drawdown: Peak-to-trough equity drop (%).
Win/Loss Trades: Number of winning/losing trades.
Risk/Reward Ratio: Simplified Sharpe ratio (returns / drawdown).
Avg Win/Loss Ratio: Average win per trade / average loss per trade.
Last Update: Current time.
i. Backtesting Metrics
Tracks:
Total trades, winning/losing trades.
Win rate (%).
Net profit ($).
Profit factor (gross profit / gross loss).
Max drawdown (%).
Simplified Sharpe ratio (returns / drawdown).
Average win/loss ratio.
Updates metrics on each closed trade.
Displays a label on the last bar with backtest period, total trades, win rate, and net profit.
j. Alerts
No explicit alertconditions defined, but you can add them for long_signal and short_signal (e.g., alertcondition(long_signal, "GT Long Entry", "Long Signal Detected!")).
Use TradingView's alert system with Strategy Tester outputs.
3. Usage Tips
Timeframe: Best for H1-D1 timeframes. Shorter frames (M1-M15) may produce noisy signals.
Settings:
Risk Management: Adjust sl_percent (e.g., 1% for volatile markets) and tp_percent (e.g., 3% for scalping).
Herd Threshold: Increase to 2.5 for stricter herd detection in choppy markets.
Liquidity Lookback: Reduce to 20 for faster markets (e.g., crypto).
Nash Period: Increase to 200 for longer-term analysis.
Backtesting:
Use TradingView's Strategy Tester to evaluate performance.
Check win rate (>50%), profit factor (>1.5), and max drawdown (<20%) for viability.
Test on different assets/timeframes to ensure robustness.
Live Trading:
Start with a demo account.
Combine with other indicators (e.g., EMAs, support/resistance) for confirmation.
Monitor liquidity traps and institutional flow for context.
Risk Management:
Always use SL/TP to limit losses.
Adjust position_size for risk tolerance (e.g., 5% of equity for conservative trading).
Avoid over-leveraging (pyramiding=3 can amplify risk).
Troubleshooting:
If no trades are executed, check signal conditions (e.g., lower herd_threshold or liquidity_sensitivity).
Ensure sufficient historical data for Nash and liquidity calculations.
If tables overlap, adjust position.top_right/bottom_right coordinates.
4. Key Differences from the Previous Indicator
Indicator vs. Strategy: The previous code was an indicator (VP + Game Theory Integrated Strategy) focused on visualization and alerts. This is a strategy with automated entries/exits and backtesting.
Volume Profile: Absent in this strategy, making it lighter but less focused on high-volume zones.
Wick Analysis: Not included here, unlike the previous indicator's heavy reliance on wick patterns.
Backtesting: This strategy includes detailed performance metrics and a backtest table, absent in the indicator.
Simpler Signals: Focuses on Game Theory signals (contrarian, momentum, Nash reversion) without the "Power/Ultra Power" hierarchy.
Risk Management: Explicit SL/TP and dynamic position sizing, not present in the indicator.
5. Conclusion
The "Game Theory Trading Strategy" is a sophisticated system leveraging herd behavior, institutional flows, liquidity traps, and Nash equilibrium to trade market inefficiencies. It’s designed for traders who understand Game Theory principles and want automated execution with robust risk management. However, it requires thorough backtesting and parameter optimization for specific markets (e.g., forex, crypto, stocks). The backtest table and visual aids make it easy to monitor performance, but always combine with other analysis tools and proper capital management.
If you need help with backtesting, adding alerts, or optimizing parameters, let me know!