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Hello friends at Gate Square! 👋
Many people ask, "Why do I often buy at the peak but sell at the trough?" Well, after observing, there are 3 bad habits we must avoid if we want to survive in the crypto market:
FOMO (Fear of Missing Out): Buying coins just because they're being talked about a lot or their price has already increased by 50%. Remember, if it's already very green, that's the time to be cautious, not to enter!
Not Using Stop Loss: Hoping the price will bounce back without a backup plan. Capital is life, it must be protected!
Over-Leverage: Using too high leverage in Futures without careful calculation.
My tip today: Try to focus on monitoring coins with strong fundamentals on Gate.io and wait for a healthy correction moment to enter. 📈
What about you, what is the most common mistake you make when starting trading? Let's share in the comments so we can learn from each other! 👇
#GateSquare #TradingTips #CryptoIndonesia #DYOR #ContentMining