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Benchmark dataset for mid-price forecasting of limit order book data with machine learning methods

机译:基准数据集,用于中价预测限制簿数据与机器学习方法

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摘要

Managing the prediction of metrics in high-frequency financial markets is a challenging task. An efficient way is by monitoring the dynamics of a limit order book to identify the information edge. This paper describes the first publicly available benchmark dataset of high-frequency limit order markets for mid-price prediction. We extracted normalized data representations of time series data for five stocks from the Nasdaq Nordic stock market for a time period of 10 consecutive days, leading to a dataset of similar to 4,000,000 time series samples in total. A day-based anchored cross-validation experimental protocol is also provided that can be used as a benchmark for comparing the performance of state-of-the-art methodologies. Performance of baseline approaches are also provided to facilitate experimental comparisons. We expect that such a large-scale dataset can serve as a testbed for devising novel solutions of expert systems for high-frequency limit order book data analysis.
机译:管理高频金融市场中指标预测是一个具有挑战性的任务。 一种有效的方法是通过监视限制票据的动态来识别信息边缘。 本文介绍了用于中价预测的高频限制令市场的第一个公开的基准数据集。 我们从纳斯达克北欧股市中提取了一系列股票的正常化数据表示连续10天,导致与4,000,000次时间序列样本相似的数据集。 还提供了一种基于日的锚定交叉验证实验方案,其可用作比较最先进的方法的性能的基准。 还提供基线方法的性能以促进实验比较。 我们预计这种大型数据集可以作为设计用于高频限制簿数据分析的专家系统的新解决方案的测试平台。

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