Supervised machine learning has several drawbacks that make it difficult to use in many situations. Drawbacks include: heavy reliance on massive training data, limited generalizability and poor expressiveness of high-level semantics. Low-shot Learning attempts to address these drawbacks. Low-shot learning allows the model to obtain good predictive power with very little or no training data, where structured knowledge plays a key role as a high-level semantic representation of human. This article will review the fundamental factors of low-shot learning technologies, with a focus on the operation of structured knowledge under different low-shot conditions. We also introduce other techniques relevant to low-shot learning. Finally, we point out the limitations of low-shot learning, the prospects and gaps of industrial applications, and future research directions.
翻译:受监督的机器学习有几个缺点,使许多情况下难以使用。缺点包括:严重依赖大量培训数据,高层次语义学的普及程度有限和表达能力差。低发学习试图解决这些缺点。低发学习使模型能够获得良好的预测能力,而培训数据很少或根本没有,在这种能力中,结构化知识作为人类的高层语义学代表发挥着关键作用。本篇文章将审查低发学习技术的基本因素,重点是在不同低发条件下结构化知识的运作。我们还引入了与低发学习有关的其他技术。最后,我们指出了低发学习的局限性、工业应用的前景和差距以及未来的研究方向。