Bitcoin address classification method based on improved random forest
A classification method, random forest technology, applied to computer components, payment systems, payment circuits, etc., can solve the problems of complicated data collection methods, difficult data collection, and inability to completely cluster transaction input user address groups
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[0057] The Bitcoin address classification based on the improved random forest provided by the present invention will be described in detail below in conjunction with the drawings and specific embodiments.
[0058] Such as figure 1 — Figure 5 As shown, the Bitcoin address classification method based on the improved random forest provided by the present invention comprises the following steps carried out in order:
[0059] S1: Extract the original feature of the address from the historical transaction records of the blockchain and add it to the feature set used by the existing machine learning classification method to build a larger feature set;
[0060] The specific method is as follows:
[0061] S101: Set the following rules for extracting the original features of the address: the unit of address survival time is days, and the survival time is less than 24 hours as one day, and the number of survival days in other cases is rounded down; for self-change transactions, that is...
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