MicroAlgo Inc. Announced Bitcoin Trading Prediction Algorithm Based on Machine Learning and Technical Indicators

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BEIJING, Dec. 26, 2023 /PRNewswire/ -- MicroAlgo Inc. (NASDAQ: MLGO) (the "Company" or "MicroAlgo"), today announced a Bitcoin trading prediction algorithm based on machine learning and technical indicators. The algorithm combines deep learning, technical analysis and quantitative trading strategies to provide investors with more accurate and intelligent decision support. By learning and analyzing a large amount of data from the Bitcoin market, the algorithm can better capture the characteristics and patterns of the market and provide more reliable price predictions.

The booming digital asset market and the rapid rise of finance and tech companies offer the opportunity to develop innovative trading algorithms. Algorithms based on machine learning and technical indicators are not only better adapted to the complexity of the Bitcoin market, but are also expected to provide investors with smarter and more efficient trading decision-making tools. MicroAlgo Inc. believes that the future of the digital asset market is promising, and MicroAlgo Inc. believes that through algorithmic innovation, it can better meet the challenges of the market and capitalize on the opportunities. MicroAlgo Inc. believes that its innovative algorithm can be applied not only to the Bitcoin market, but also to other digital assets, providing investors with more reliable decision-making support.

MicroAlgo Inc.'s Bitcoin trading prediction algorithm based on machine learning and technical indicators utilizes a large amount of market data to train a model to predict the future movement of the Bitcoin price. The following are the main machine learning models used:

Support vector machines (SVM): SVM is a powerful classification and regression algorithm that performs well in dealing with non-linear relationships.MicroAlgo Inc. uses SVM to capture complex patterns in Bitcoin's price movements to help us better understand the market.

Deep learning model: The long short-term memory network (LSTM) is a deep learning model for sequential data that captures long-term dependencies in data. Using LSTM for Bitcoin price time series allows for better prediction of future price changes.

Decision tree: A decision tree is a tree model that is capable of performing complex classification and regression by recursively dividing data. Using decision trees to model different states of the market provides our algorithms with more flexible predictive capabilities.

To more fully understand the technical aspects of the Bitcoin market, MicroAlgo Inc.'s machine learning and technical indicator-based Bitcoin trading prediction algorithm employs a series of technical indicators that analyze market data, such as price and volume, to extract potential market patterns. Below are the main technical indicators: