Temporal logistic neural Bag-of-Features for financial time series forecasting leveraging limit order book data

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  • Nikolaos Passalis, Tampere University, Aristotle University of Thessaloniki
  • ,
  • Anastasios Tefas, Aristotle University of Thessaloniki
  • ,
  • Juho Kanniainen, Tampere University
  • ,
  • Moncef Gabbouj, Tampere University
  • ,
  • Alexandros Iosifidis

Time series forecasting is a crucial component of many important applications, ranging from forecasting the stock markets to energy load prediction. The high-dimensionality, velocity and variety of the data collected in many of these applications pose significant and unique challenges that must be carefully addressed for each of them. In this work, a novel Temporal Logistic Neural Bag-of-Features approach, that can be used to tackle these challenges, is proposed. The proposed method can be effectively combined with deep neural networks, leading to powerful deep learning models for time series analysis. However, combining existing BoF formulations with deep feature extractors pose significant challenges: the distribution of the input features is not stationary, tuning the hyper-parameters of the model can be especially difficult and the normalizations involved in the BoF model can cause significant instabilities during the training process. The proposed method is capable of overcoming these limitations by a employing a novel adaptive scaling mechanism and replacing the classical Gaussian-based density estimation involved in the regular BoF model with a logistic kernel. The effectiveness of the proposed approach is demonstrated using extensive experiments on a large-scale limit order book dataset that consists of more than 4 million limit orders.

OriginalsprogEngelsk
TidsskriftPattern Recognition Letters
Vol/bind136
Sider (fra-til)183-189
Antal sider7
ISSN0167-8655
DOI
StatusUdgivet - aug. 2020

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