Queue Imbalance as a One-Tick-Ahead Price Predictor in a Limit Order Book
We investigate whether the bid/ask queue imbalance in a limit order book (LOB) provides significant predictive power for the direction of the next mid-price movement. We consider this question both in the context of a simple binary classifier, which seeks to predict the direction of the next mid-pri...
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Zusammenfassung: | We investigate whether the bid/ask queue imbalance in a limit order book
(LOB) provides significant predictive power for the direction of the next
mid-price movement. We consider this question both in the context of a simple
binary classifier, which seeks to predict the direction of the next mid-price
movement, and a probabilistic classifier, which seeks to predict the
probability that the next mid-price movement will be upwards. To implement
these classifiers, we fit logistic regressions between the queue imbalance and
the direction of the subsequent mid-price movement for each of 10 liquid stocks
on Nasdaq. In each case, we find a strongly statistically significant
relationship between these variables. Compared to a simple null model, which
assumes that the direction of mid-price changes is uncorrelated with the queue
imbalance, we find that our logistic regression fits provide a considerable
improvement in binary and probabilistic classification for large-tick stocks,
and provide a moderate improvement in binary and probabilistic classification
for small-tick stocks. We also perform local logistic regression fits on the
same data, and find that this semi-parametric approach slightly outperform our
logistic regression fits, at the expense of being more computationally
intensive to implement. |
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DOI: | 10.48550/arxiv.1512.03492 |