# HFT的所有文章

在 HTX 新聞中心流覽與「HFT」相關的最新資訊與深度分析。潘蓋市場趨勢、專案動態、技術進展及監管政策,提供權威的加密行業洞察。

Earning $80,000 in One Day: How Top Players Turn Polymarket into Their Personal ATM?

In just under a day, a top trader on Polymarket, using the handle Bidou28old, netted $80,000 by exploiting the platform’s newly launched ultra-short-term prediction markets (5-minute and 15-minute intervals). The user is believed to be a quantitative trader or arbitrageur leveraging low-latency data feeds to capitalize on pricing delays. With only 48 total predictions, the trader maintained a remarkably high risk-reward ratio, often buying outcomes with only a 3-8% probability (e.g., betting on a Bitcoin rebound within minutes during a sharp decline). Even with 7 losses exceeding $10,000, the strategy remained profitable due to high payoff multiples—sometimes as high as 33x. The trader employed strict position management, placing large bets ($7,000–$19,000) on high-probability opportunities and securing returns between $4,800–$6,400 per successful trade. In one notable 30-minute span, the user executed three consecutive winning trades, earning over $18,000, demonstrating a high-frequency, data-driven approach. Activity was concentrated during U.S. evening hours (7:30–11:00 PM ET), suggesting either a North American night trader or a professional Asian quant operating during daytime hours. The trader focused predominantly on Bitcoin and Ethereum due to their high liquidity and volatility. This case highlights how sophisticated players use quantitative strategies and real-time market data to systematically profit from short-term market movements on prediction platforms.

比推02/13 12:51

Earning $80,000 in One Day: How Top Players Turn Polymarket into Their Personal ATM?

比推02/13 12:51

High-Frequency Trading, $100K Annual Income: The Most 'Boring' Profit Myth on Polymarket

A user known as planktonXD (0x4ffe49ba2a4cae123536a8af4fda48faeb609f71) has generated over $106,000 in profit on Polymarket within a year by executing more than 61,000 predictions—averaging around 170 trades per day. This high-frequency, automated strategy focuses on exploiting small, certain opportunities rather than betting on high-risk, high-reward outcomes. The approach is characterized by market-making and micro-arbitrage: placing orders on both sides of the order book to capture spreads or profiting from mispriced options in low-liquidity markets. The largest single win was only $2,527, illustrating a disciplined, risk-managed method that avoids large drawdowns. The bot operates across diverse categories—sports, weather, crypto prices, politics—constantly scanning for pricing inefficiencies. Notable examples include buying heavily undervalued options in niche markets, such as esports matches or extreme crypto price movements, where probability is mispriced due to emotional trading or thin order books. For instance, a $16 bet on SOL falling to $130 (priced at 0.7¢, implying <1% chance) returned $1,574 during a volatile period. Key takeaways: The strategy highlights the power of compounding small gains, the necessity of automation and API tools, and the superiority of high-probability opportunities over high-risk bets. In prediction markets, the most advanced approach isn’t forecasting—it’s managing probability and liquidity.

marsbit02/11 13:06

High-Frequency Trading, $100K Annual Income: The Most 'Boring' Profit Myth on Polymarket

marsbit02/11 13:06

The Advancing MM 3: Statistical Edge and Signal Design

Title: The Attack of MM 3: Statistical Edge and Signal Design Author: Dave This article, the third in the "Attack of MM" series, explores how market makers (MMs) actively gain a "micro alpha" advantage through statistical edges and signal design, rather than just passively adjusting quotes. Micro alpha refers to a conditional probability shift in predicting short-term price movements (within ~100ms to ~10s), such as the direction of the next price change, mid-price drift, or trade asymmetry. It is not about forecasting trends but detecting probabilistic biases that allow MMs to act preemptively—buying before likely price increases, withdrawing bids before declines, or reducing exposure during risky periods. Key signals discussed include: - **Order Book Imbalance (OBI)**: Measures the normalized volume difference between buy and sell orders near current prices. - **Order Flow Imbalance (OFI)**: Tracks aggressive taker orders that drive price changes. - **Queue Dynamics**: Analyzes order queue behavior, including hidden orders (icebergs) and spoofing (fake large orders to manipulate perception). - **Cancel Ratio (CR)**: Indicates liquidity withdrawal rates, signaling market instability. The article emphasizes that speed is MMs' absolute advantage. Lower latency enables faster reaction to market events, facilitating latency arbitrage by executing orders before competitors. In crypto exchanges, some players even get priority execution rights, highlighting the importance of speed and access. Finally, the author notes the complexity of real-world MM strategies and hints at future topics like dynamic hedging and options.

深潮12/28 04:11

The Advancing MM 3: Statistical Edge and Signal Design

深潮12/28 04:11

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