Semi-supervised learning (SSL) has become an interesting research area due to its capacity for learning in scenarios where both labeled and unlabeled data are available. In this work, we focus on the task of transduction - when the objective is to label all data presented to the learner - with a mean-field approximation to the Potts model. Aiming at this particular task we study how classification results depend on $\beta$ and find that the optimal phase depends highly on the amount of labeled data available. In the same study, we also observe that more stable classifications regarding small fluctuations in $\beta$ are related to configurations of high probability and propose a tuning approach based on such observation. This method relies on a novel parameter $\gamma$ and we then evaluate two different values of the said quantity in comparison with classical methods in the field. This evaluation is conducted by changing the amount of labeled data available and the number of nearest neighbors in the similarity graph. Empirical results show that the tuning method is effective and allows NMF to outperform other approaches in datasets with fewer classes. In addition, one of the chosen values for $\gamma$ also leads to results that are more resilient to changes in the number of neighbors, which might be of interest to practitioners in the field of SSL.
翻译:半监督学习(SSL)已经成为一个令人感兴趣的研究领域,因为它在标签和未标签数据都存在的情况下具有学习能力。在这项工作中,我们侧重于转换任务 -- -- 当目标是将提供给学习者的所有数据贴上标签时 -- -- 与Potts模型的中位点近似值。我们研究分类结果如何依赖$\beta美元,发现最佳阶段在很大程度上取决于标签数据的数量。在同一项研究中,我们还注意到,关于美元和无标签数据的小额波动的更稳定分类与高概率配置有关,并提议基于这种观察的调整方法。这个方法依赖于一个新的参数$\gamma$,然后我们根据实地的经典方法评估上述数量的两种不同值。这项评价是通过改变标签数据的数量和类似图表中最近的邻居的数量来进行的。 经验性结果显示,调控方法是有效的,允许NMF在数据集中超越其他方法,使用较少的类别。此外,所选择的SLA值的弹性值之一可能比SLA值高。