Generative modelling has been a topic at the forefront of machine learning research for a substantial amount of time. With the recent success in the field of machine learning, especially in deep learning, there has been an increased interest in explainable and interpretable machine learning. The ability to model distributions and provide insight in the density estimation and exact data likelihood is an example of such a feature. Normalizing Flows (NFs), a relatively new research field of generative modelling, has received substantial attention since it is able to do exactly this at a relatively low cost whilst enabling competitive generative results. While the generative abilities of NFs are typically explored, we focus on exploring the data distribution modelling for Out-of-Distribution (OOD) detection. Using one of the state-of-the-art NF models, GLOW, we attempt to detect OOD examples in the ISIC dataset. We notice that this model under performs in conform related research. To improve the OOD detection, we explore the masking methods to inhibit co-adaptation of the coupling layers however find no substantial improvement. Furthermore, we utilize Wavelet Flow which uses wavelets that can filter particular frequency components, thus simplifying the modeling process to data-driven conditional wavelet coefficients instead of complete images. This enables us to efficiently model larger resolution images in the hopes that it would capture more relevant features for OOD. The paper that introduced Wavelet Flow mainly focuses on its ability of sampling high resolution images and did not treat OOD detection. We present the results and propose several ideas for improvement such as controlling frequency components, using different wavelets and using other state-of-the-art NF architectures.
翻译:在相当长的时间里,生成模型一直是机器学习研究前沿的一个主题。随着机器学习领域,特别是深层学习领域最近的成功,对可解释和可解释的机器学习越来越感兴趣。模型分布和对密度估计和精确数据可能性提供洞察力的能力就是这种特征的一个实例。在基因模型的相对新的研究领域,流动(NFs)已经得到了大量关注,因为它能够以相对较低的成本完成这项工作,同时能够取得竞争性的基因化结果。虽然NFs的基因化能力通常得到探索,但我们侧重于探索用于外部分发(OOOOD)检测的数据分配模型。利用最先进的NF模型之一,我们试图在ISIC数据集中检测OOD的例子。我们注意到,这一模型正在按照相关的研究进行操作。为了改进ODD检测,我们探索了抑制政变层的共适应性改进方法,但是没有发现任何重大改进。此外,我们利用波流流流模型来探索O型模型,而不是OOO型模型, 利用更先进的NF模型,从而能够将某些频率的图像升级,从而简化了我们的模型,从而简化了这种稳定的流流动的图像,从而简化了它,从而简化了它的模型,从而简化了其它的图像的分辨率的模型,从而可以简化了它。