This paper reviews concepts, modeling approaches, and recent findings along a spectrum of different levels of abstraction of neural network models including generalization across (1) Samples, (2) Distributions, (3) Domains, (4) Tasks, (5) Modalities, and (6) Scopes. Results on (1) sample generalization show that, in the case of ImageNet, nearly all the recent improvements reduced training error while overfitting stayed flat; with nearly all the training error eliminated, future progress will require a focus on reducing overfitting. Perspectives from statistics highlight how (2) distribution generalization can be viewed alternately as a change in sample weights or a change in the input-output relationship; thus, techniques that have been successful in domain generalization have the potential to be applied to difficult forms of sample or distribution generalization. Transfer learning approaches to (3) domain generalization are summarized, as are recent advances and the wealth of domain adaptation benchmark datasets available. Recent breakthroughs surveyed in (4) task generalization include few-shot meta-learning approaches and the BERT NLP engine, and recent (5) modality generalization studies are discussed that integrate image and text data and that apply a biologically-inspired network across olfactory, visual, and auditory modalities. Recent (6) scope generalization results are reviewed that embed knowledge graphs into deep NLP approaches. Additionally, concepts from neuroscience are discussed on the modular architecture of brains and the steps by which dopamine-driven conditioning leads to abstract thinking.
翻译:本文审视了神经网络模型的各种不同程度的抽象抽象概念、建模办法和最新发现,其中包括:(1) 样本、(2) 分布、(3) 域、(4) 任务、(5) 模式和(6) 范围。(1) 抽样概括结果显示,就图像网而言,几乎所有近期的改进都减少了培训错误,而过度装配却始终是平坦的;几乎所有培训错误都消除了,今后的进展将要求侧重于减少过度装配。从统计角度看,(2) 分布一般化可被替代地视为抽样权重的变化或投入-产出关系的变化;因此,在领域常规化方面取得成功的技术有可能适用于难的样本或分布一般化形式。将学习方法转移到(3) 领域一般化,正如最近的进展和大量领域适应基准数据集一样,四大任务一般化的最近突破包括很少的元学习方法和BERT NLP 引擎,以及最近的模式一般分类研究,即整合图像和文本数据,以及将具有启发性思维基础的网络应用到最新的视觉-LA型结构中,通过审视的视觉-图像-Asticalalalalalal-chaal viewal vial viewal viewal violal view view violal violal view view vical view view view vical vical vical view view view viewsal view views viewsal viewsmaltial vical vical vical viewsmmmal vical-inal-inal-inaltical-inal-inal-inal-inal-inal-inal-inal-inal-inal-inal-inal-inal-inal-inal-inal-inal-inal-inal-inal-inal-inal-inal-inal-inal-inal-inal-inal-inal-inal-in-inal-inal-inal-inal-inal-in-inal-inal-inal-inal-inal-inal-inal-inal-inal-inal-</s>