In practical scenarios, it is often the case that the available training data within the target domain only exist for a limited number of classes, with the remaining classes only available within surrogate domains. We show that including the target domain in training when there exist disjoint classes between the target and surrogate domains creates significant negative transfer, and causes performance to significantly decrease compared to training without the target domain at all. We hypothesize that this negative transfer is due to an intermediate shortcut that only occurs when multiple source domains are present, and provide experimental evidence that this may be the case. We show that this phenomena occurs on over 25 distinct domain shifts, both synthetic and real, and in many cases deteriorates the performance to well worse than random, even when using state-of-the-art domain adaptation methods.
翻译:在实际情况下,目标领域现有培训数据往往只存在于数量有限的班级中,其余班级只能在代代尔基域内提供。我们表明,在目标领域和代尔基域之间存在脱节班级时,将目标领域纳入培训,会造成显著的负转移,并导致业绩与完全没有目标领域的培训相比显著下降。我们假设,这种负转移是由于中间捷径造成的,而中间捷径只有在多个源域存在时才会出现,并提供实验性证据说明这种情况可能如此。我们表明,这种现象发生在25个以上不同的地段变化中,包括合成和真实的,在许多情况下,即使使用了最先进的域适应方法,其性能也比随机性差得多。</s>