This paper presents the Deep Bag-of-Sub-Emotions (DeepBoSE), a novel deep learning model for depression detection in social media. The model is formulated such that it internally computes a differentiable Bag-of-Features (BoF) representation that incorporates emotional information. This is achieved by a reinterpretation of classical weighting schemes like term frequency-inverse document frequency into probabilistic deep learning operations. An important advantage of the proposed method is that it can be trained under the transfer learning paradigm, which is useful to enhance conventional BoF models that cannot be directly integrated into deep learning architectures. Experiments were performed in the eRisk17 and eRisk18 datasets for the depression detection task; results show that DeepBoSE outperforms conventional BoF representations and it is competitive with the state of the art, achieving a F1-score over the positive class of 0.64 in eRisk17 and 0.65 in eRisk18.
翻译:本文介绍了社交媒体中抑郁症检测的新型深层学习模式“深包次感知”(DeepBOSE),这是社交媒体中发现抑郁症的一种新颖的深层学习模式。该模式的形成是为了在内部计算一个包含情感信息的、不同易懂的特征包(BOF)代表。这是通过重新解释典型的加权办法实现的,如频反文档频率等典型加权办法,将其转化为概率深刻的深层学习操作。拟议方法的一个重要优点是可以在转移学习模式下对其进行培训,这有利于加强无法直接融入深层学习结构的常规博爱模式。在eRisk17 和 eRisk18 中进行了实验;结果显示,深层博爱超越了常规的博爱代表方式,它与艺术状态竞争,在正值等级为0.64 eRisk17 和 eRisk18 0.65 上取得了F1分位数。