Weighting strategy prevails in machine learning. For example, a common approach in robust machine learning is to exert lower weights on samples which are likely to be noisy or quite hard. This study reveals another undiscovered strategy, namely, compensating. Various incarnations of compensating have been utilized but it has not been explicitly revealed. Learning with compensating is called compensation learning and a systematic taxonomy is constructed for it in this study. In our taxonomy, compensation learning is divided on the basis of the compensation targets, directions, inference manners, and granularity levels. Many existing learning algorithms including some classical ones can be viewed or understood at least partially as compensation techniques. Furthermore, a family of new learning algorithms can be obtained by plugging the compensation learning into existing learning algorithms. Specifically, two concrete new learning algorithms are proposed for robust machine learning. Extensive experiments on image classification and text sentiment analysis verify the effectiveness of the two new algorithms. Compensation learning can also be used in other various learning scenarios, such as imbalance learning, clustering, regression, and so on.
翻译:机械学习普遍采用加权策略。例如,强力机器学习的共同方法是对可能吵闹或相当困难的样本降低重量。本研究揭示了另一个尚未发现的策略,即补偿。利用了各种补偿的演化,但并未明确披露。补偿的学习称为补偿学习,本研究对此进行了系统的分类学。在分类学中,补偿学习根据补偿目标、方向、推论方式和颗粒程度进行分割。许多现有的学习算法,包括一些古典算法,至少可以被视为或部分理解为补偿技术。此外,通过将补偿学习纳入现有的学习算法,可以取得一套新的学习算法。具体地说,为稳健的机器学习提出了两种具体的新的学习算法。关于图像分类和文字感分析的广泛实验可以验证两种新算法的有效性。补偿学习也可以用于其他不同的学习假设,例如不平衡学习、组合、回归等等。