Modern well-performing approaches to neural decoding are based on machine learning models such as decision tree ensembles and deep neural networks. The wide range of algorithms that can be utilized to learn from neural spike trains, which are essentially time-series data, results in the need for diverse and challenging benchmarks for neural decoding, similar to the ones in the fields of computer vision and natural language processing. In this work, we propose a spike train classification benchmark, based on open-access neural activity datasets and consisting of several learning tasks such as stimulus type classification, animal's behavioral state prediction, and neuron type identification. We demonstrate that an approach based on hand-crafted time-series feature engineering establishes a strong baseline performing on par with state-of-the-art deep learning-based models for neural decoding. We release the code allowing to reproduce the reported results.
翻译:现代良好的神经解码方法基于诸如决策树群和深层神经网络等机器学习模型。可以用来从神经峰值列列中学习的多种算法,这些算法基本上是时间序列数据,因此需要各种具有挑战性的神经解码基准,类似于计算机视觉和自然语言处理领域的神经解码基准。在这项工作中,我们提议基于可公开获取的神经活动数据集的快速列车分类基准,由刺激型分类、动物行为状态预测和神经型类识别等几项学习任务组成。我们证明,基于手制时间序列特征工程的方法确立了与最先进的神经解码深度学习模型同等的强大基准。我们发布了允许复制所报告结果的代码。