This open problem asks whether there exists an online learning algorithm for binary classification that guarantees, for all target concepts, to make a sublinear number of mistakes, under only the assumption that the (possibly random) sequence of points X allows that such a learning algorithm can exist for that sequence. As a secondary problem, it also asks whether a specific concise condition completely determines whether a given (possibly random) sequence of points X admits the existence of online learning algorithms guaranteeing a sublinear number of mistakes for all target concepts.
翻译:这一开放问题问,是否存在一个双轨分类在线学习算法,该算法能保证对所有目标概念进行分线计算错误的次数,仅假设X点的(可能随机的)序列允许该序列存在这种学习算法。 作为一个次要问题,它还问,一个具体的简明条件是否完全确定X点的给定(可能随机的)序列是否承认存在在线学习算法,保证所有目标概念的次线性错误数。