{"title":"高斯混合的二分类:支持向量的丰度、良性过拟合和正则化","authors":"Ke Wang, Christos Thrampoulidis","doi":"10.1137/21m1415121","DOIUrl":null,"url":null,"abstract":"Deep neural networks generalize well despite being exceedingly overparameterized and being trained without explicit regularization. This curious phenomenon has inspired extensive research activity in establishing its statistical principles: Under what conditions is it observed? How do these depend on the data and on the training algorithm? When does regularization benefit generalization? While such questions remain wide open for deep neural nets, recent works have attempted gaining insights by studying simpler, often linear, models. Our paper contributes to this growing line of work by examining binary linear classification under a generative Gaussian mixture model. Motivated by recent results on the implicit bias of gradient descent, we study both max-margin SVM classifiers (corresponding to logistic loss) and min-norm interpolating classifiers (corresponding to least-squares loss). First, we leverage an idea introduced in [V. Muthukumar et al., arXiv:2005.08054, (2020)] to relate the SVM solution to the min-norm interpolating solution. Second, we derive novel non-asymptotic bounds on the classification error of the latter. Combining the two, we present novel sufficient conditions on the covariance spectrum and on the signal-to-noise ratio (SNR) under which interpolating estimators achieve asymptotically optimal performance as overparameterization increases. Interestingly, our results extend to a noisy model with constant probability noise flips. Contrary to previously studied discriminative data models, our results emphasize the crucial role of the SNR and its interplay with the data covariance. Finally, via a combination of analytical arguments and numerical demonstrations we identify conditions under which the interpolating estimator performs better than corresponding regularized estimates.","PeriodicalId":74797,"journal":{"name":"SIAM journal on mathematics of data science","volume":"20 1","pages":"260-284"},"PeriodicalIF":1.9000,"publicationDate":"2020-11-18","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"18","resultStr":"{\"title\":\"Binary Classification of Gaussian Mixtures: Abundance of Support Vectors, Benign Overfitting, and Regularization\",\"authors\":\"Ke Wang, Christos Thrampoulidis\",\"doi\":\"10.1137/21m1415121\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"Deep neural networks generalize well despite being exceedingly overparameterized and being trained without explicit regularization. This curious phenomenon has inspired extensive research activity in establishing its statistical principles: Under what conditions is it observed? How do these depend on the data and on the training algorithm? When does regularization benefit generalization? While such questions remain wide open for deep neural nets, recent works have attempted gaining insights by studying simpler, often linear, models. Our paper contributes to this growing line of work by examining binary linear classification under a generative Gaussian mixture model. Motivated by recent results on the implicit bias of gradient descent, we study both max-margin SVM classifiers (corresponding to logistic loss) and min-norm interpolating classifiers (corresponding to least-squares loss). First, we leverage an idea introduced in [V. Muthukumar et al., arXiv:2005.08054, (2020)] to relate the SVM solution to the min-norm interpolating solution. Second, we derive novel non-asymptotic bounds on the classification error of the latter. Combining the two, we present novel sufficient conditions on the covariance spectrum and on the signal-to-noise ratio (SNR) under which interpolating estimators achieve asymptotically optimal performance as overparameterization increases. Interestingly, our results extend to a noisy model with constant probability noise flips. Contrary to previously studied discriminative data models, our results emphasize the crucial role of the SNR and its interplay with the data covariance. 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引用次数: 18
摘要
尽管深度神经网络过于参数化,而且训练时没有明确的正则化,但它泛化得很好。这种奇怪的现象激发了广泛的研究活动,以建立其统计原理:在什么条件下观察到它?这些是如何依赖于数据和训练算法的?什么时候正则化有利于泛化?虽然这些问题对于深度神经网络来说仍然是开放的,但最近的研究试图通过研究更简单的、通常是线性的模型来获得见解。我们的论文通过研究生成高斯混合模型下的二元线性分类,为这一不断增长的工作做出了贡献。受最近关于梯度下降隐式偏差的研究结果的启发,我们研究了最大边际SVM分类器(对应于逻辑损失)和最小范数插值分类器(对应于最小二乘损失)。首先,我们利用[V.]Muthukumar et al. [j] ., vol . 4:2005.08054, (2020) .]其次,我们对后者的分类误差给出了新的非渐近界。结合这两者,我们提出了新的充分条件,在协方差谱和信噪比(SNR)下,随着过参数化的增加,插值估计器达到渐近最优性能。有趣的是,我们的结果扩展到具有恒定概率的噪声翻转的噪声模型。与以往研究的判别数据模型相反,我们的研究结果强调信噪比及其与数据协方差的相互作用的关键作用。最后,通过分析论证和数值论证的结合,我们确定了插值估计量比相应的正则化估计性能更好的条件。
Binary Classification of Gaussian Mixtures: Abundance of Support Vectors, Benign Overfitting, and Regularization
Deep neural networks generalize well despite being exceedingly overparameterized and being trained without explicit regularization. This curious phenomenon has inspired extensive research activity in establishing its statistical principles: Under what conditions is it observed? How do these depend on the data and on the training algorithm? When does regularization benefit generalization? While such questions remain wide open for deep neural nets, recent works have attempted gaining insights by studying simpler, often linear, models. Our paper contributes to this growing line of work by examining binary linear classification under a generative Gaussian mixture model. Motivated by recent results on the implicit bias of gradient descent, we study both max-margin SVM classifiers (corresponding to logistic loss) and min-norm interpolating classifiers (corresponding to least-squares loss). First, we leverage an idea introduced in [V. Muthukumar et al., arXiv:2005.08054, (2020)] to relate the SVM solution to the min-norm interpolating solution. Second, we derive novel non-asymptotic bounds on the classification error of the latter. Combining the two, we present novel sufficient conditions on the covariance spectrum and on the signal-to-noise ratio (SNR) under which interpolating estimators achieve asymptotically optimal performance as overparameterization increases. Interestingly, our results extend to a noisy model with constant probability noise flips. Contrary to previously studied discriminative data models, our results emphasize the crucial role of the SNR and its interplay with the data covariance. Finally, via a combination of analytical arguments and numerical demonstrations we identify conditions under which the interpolating estimator performs better than corresponding regularized estimates.