Detecting an abrupt distributional shift of the data stream, known as change-point detection, is a fundamental problem in statistics and signal processing. We present a new approach for online change-point detection by training neural networks (NN), and sequentially cumulating the detection statistics by evaluating the trained discriminating function on test samples by a CUSUM recursion. The idea is based on the observation that training neural networks through logistic loss may lead to the log-likelihood function. We demonstrated the good performance of NN-CUSUM in the detection of high-dimensional data using both synthetic and real-world data.
翻译:检测数据流的突然分布变化,即变点检测,是统计学和信号处理中的基本问题。我们提出了一种新的在线变点检测方法,通过训练神经网络(NN)并通过CUSUM递归评估训练好的判别函数来顺序累积检测统计量。这种思路基于训练神经网络通过逻辑损失可能导致对数似然函数的观察。我们证明了NN-CUSUM在使用合成数据和实际数据进行高维数据检测时的良好性能。