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Which are the trading algorithms woth more consensus in the community? 


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The consensus algorithms that have gained more acceptance in the trading community are the VWAP, TWAP, and TVOL algorithms . These algorithms are widely used in algorithmic trading to assist traders in making decisions and executing transactions autonomously . They utilize real-time financial information and mathematical methods to identify the best return on transactions . The VWAP (Volume-Weighted Average Price) algorithm calculates the average price of a security based on its trading volume . The TWAP (Time-Weighted Average Price) algorithm executes trades evenly over a specified time period . The TVOL (Time-Volume) algorithm takes into account both time and volume to determine the optimal trading strategy . These algorithms have been extensively studied and are considered valuable tools for traders, with some market participants already using them for a significant portion of their trading activities .

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The paper mentions that there are about thirty algorithms to assist traders, but it does not specify which algorithms have more consensus in the community.
The paper does not mention any specific trading algorithms with more consensus in the community.
The paper does not explicitly mention which trading algorithms have more consensus in the community.
The paper does not mention any specific trading algorithms with more consensus in the community. The paper focuses on the use of the Proof-of-Work (PoW) consensus algorithm for the blockchain-enabled platform.
The paper does not mention any specific trading algorithms with more consensus in the community. The paper focuses on proposing a trade deal algorithm based on the blockchain mechanism of consensus.

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