In this paper, we investigate performing joint dimensionality reduction and classification using a novel histogram neural network. Motivated by a popular dimensionality reduction approach, t-Distributed Stochastic Neighbor Embedding (t-SNE), our proposed method incorporates a classification loss computed on samples in a low-dimensional embedding space. We compare the learned sample embeddings against coordinates found by t-SNE in terms of classification accuracy and qualitative assessment. We also explore use of various divergence measures in the t-SNE objective. The proposed method has several advantages such as readily embedding out-of-sample points and reducing feature dimensionality while retaining class discriminability. Our results show that the proposed approach maintains and/or improves classification performance and reveals characteristics of features produced by neural networks that may be helpful for other applications.
翻译:在本文中,我们利用一个新的直方神经网络调查联合维度减少和分类情况,在流行的维度减少方法的推动下,我们提议的方法纳入了在低维嵌入空间样本中计算出的分类损失,我们比较了所学的样本嵌入与t-SNE在分类准确度和质量评估方面发现的坐标之间的对比,我们还探索了在t-SNE目标中使用各种差异度量。拟议方法有若干优点,例如很容易嵌入标点外,减少特征维度,同时保留等级差异性。我们的结果显示,拟议方法保持和/或改进了分类性能,并揭示了神经网络产生的可能对其他应用有帮助的特征特征特征。