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Few-shot learning refers to the model’s ability toclassify new data when only a limited number of training instances (e.g., 10 to 100) have been provided. As a result, after being exposed to a small amount of prior information, the model improves its performance.

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Few-shot learning and active learning combined together are known as active few-shot learning (FASL). FASL . Active few-shot learning aims at tackling the challenge of quickly developing and deploying new models for real-world problems with the least effort.

 

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Advantages

The Few-shot model has multiple advantages including:

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Increased model quality. Due to the combination of technology, in multiple use cases FASL surpasses the zero-shot model performance and allows you to reach a very high quality of your model.

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Key elements

To create any few-shot model using Symanto Brain, there are two key elements required

  • Classes or also called labels, between which to discriminate (classify) the text, e.g.

    Status
    colourRed
    titleNEGATIVE
    Status
    colourGreen
    titlePOSITIVE

  • Patterns, also known as label descriptors, allow the semantic matching between the analysed text and the different labels, e.g. This text is {}

 

Input: The product has no issues but the packaging causes so much extra to squirt out and you can't stop it. For how expensive it is it's such a waste.

Result:

Status
colourBlue
titleTHIS TEXT IS NEGATIVE

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Examples

Please head over to Use Case Examples to view some common use cases.

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Next: https://symanto.atlassian.net/wiki/spaces/SYM/pages/345341958/How+to+use+FASL+Platform