Machine learning model construction method and computer readable storage medium
A machine learning model and construction method technology, applied in the field of machine learning, can solve the problems of reducing the lotting rate of lotting factors, fewer lotting factors, underreporting, and underreporting, so as to improve sampling efficiency and avoid overfitting problem, the effect of improving forecast accuracy
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Embodiment 1
[0094] Please refer to Figure 2-3 , Embodiment 1 of the present invention is: a method for constructing a machine learning model, which can be applied to the analysis of machine learning models of large-scale sparse data, such as market supervision analysis based on the dimensions of goods, production enterprises, and countries of origin; food Drug safety analysis and supervision; manufacturer’s pre-test analysis of products before leaving the factory; laboratory analysis of test items for products to be inspected and prediction of unqualified conditions; e-commerce platforms predict merchants’ integrity, basic capabilities and other scenarios.
[0095] This embodiment takes the construction of a commodity sampling model as an example to illustrate, and finally it can be applied to sampling import and export commodities to solve the differences in port supervision and other fields for different types of goods, different regions, and different environments. The accurate sampl...
Embodiment 2
[0158] This embodiment is a computer-readable storage medium corresponding to the following embodiments, on which a computer program is stored, and when the program is executed by a processor, the following steps are implemented:
[0159] According to the preset keywords, data collection is carried out to obtain auxiliary data;
[0160] Acquiring business data, and determining a data item corresponding to an input item and a data item corresponding to an output item in the business data;
[0161] Labeling the business data whose value of the data item corresponding to the output item is not empty;
[0162] Obtain a first sample according to the business data;
[0163] Acquiring tagged business data in the first sample as a second sample;
[0164] Synthesizing feature items through feature synthesis technology according to the auxiliary data and corresponding data items in the business data, and merging the feature items into the second sample as input items;
[0165] perfor...
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