Recently, much exertion has been paid to design graph self-supervised methods to obtain generalized pre-trained models, and adapt pre-trained models onto downstream tasks through fine-tuning. However, there exists an inherent gap between pretext and downstream graph tasks, which insufficiently exerts the ability of pre-trained models and even leads to negative transfer. Meanwhile, prompt tuning has seen emerging success in natural language processing by aligning pre-training and fine-tuning with consistent training objectives. In this paper, we identify the challenges for graph prompt tuning: The first is the lack of a strong and universal pre-training task across sundry pre-training methods in graph domain. The second challenge lies in the difficulty of designing a consistent training objective for both pre-training and downstream tasks. To overcome above obstacles, we propose a novel framework named SGL-PT which follows the learning strategy ``Pre-train, Prompt, and Predict''. Specifically, we raise a strong and universal pre-training task coined as SGL that acquires the complementary merits of generative and contrastive self-supervised graph learning. And aiming for graph classification task, we unify pre-training and fine-tuning by designing a novel verbalizer-free prompting function, which reformulates the downstream task in a similar format as pretext task. Empirical results show that our method surpasses other baselines under unsupervised setting, and our prompt tuning method can greatly facilitate models on biological datasets over fine-tuning methods.
翻译:最近,我们做了大量努力,设计了自我监督的图表方法,以获得通用的事先培训模式,并通过微调将经过预先培训的模型改造成下游任务;然而,在借口和下游图表任务之间存在着内在的差距,这不足以发挥经过预先培训的模式的能力,甚至导致负转移;与此同时,迅速调整发现自然语言处理方面正在取得成功,办法是根据一致的培训目标调整培训前和微调;在本文件中,我们确定了图表快速调整的挑战:首先,在图形领域,缺乏一个强有力的和普遍的训练前先期任务,在杂项培训前和下游任务方面缺乏一个强有力的和普遍的训练前期任务;第二个挑战是难以为培训前和下游任务设计一个一致的培训目标;为了克服以上障碍,我们提出了一个名为SGL-PT的新框架,这个框架遵循学习战略“预先培训、迅速和预测”。 具体而言,我们提出了一个强有力的和普遍的培训前期任务,这个任务是SGL,这个任务可以获得基因调整和对比性自我校正的自我调整的图表学习方法的互补性;第二个挑战在于难以设计一个统一的训练前期任务,在图表分类任务中,我们统一了类似格式任务的格式,在深度分析任务中,在深度分析中,将一个方向任务中将一个方向上更精确地调整了一个方向上的任务,以展示一个方向,在方向上显示一个方向上的任务。</s>