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A local non-parametric model for trade sign inference

机译:商业符号推断的局部非参数模型

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We investigate a regularity in market order submission strategies for 12 stocks with large market capitalization on the Australian Stock Exchange. The regularity is evidenced by a predictable relationship between the trade sign (trade initiator), size of the trade, and the contents of the limit order book before the trade. We demonstrate this predictability by developing an empirical inference model to classify trades into buyer-initiated and seller-initiated. The model employs a local non-parametric method, k-nearest neighbor, which in the past was used successfully for chaotic time series prediction. The k-nearest neighbor with three predictor variables achieves an average out-of-sample classification accuracy of 71.40%, compared to 63.32% for the linear logistic regression with seven predictor variable. The result suggests that a non-linear approach may produce a more parsimonious trade sign inference model with a higher out-of-sample classification accuracy. Furthermore, for most of our stocks the observed regularity in market order submissions seems to have a memory of at least 30 trading days. (C) 2004 Elsevier B.V. All rights reserved.
机译:我们调查了12种在澳大利亚证券交易所具有较大市值的股票的市场定单提交策略的规律性。规律性由交易符号(交易发起者),交易规模和交易前的限价订单簿内容之间的可预测关系证明。我们通过开发经验推断模型将交易分类为买方发起和卖方发起来证明这种可预测性。该模型采用局部非参数方法k最近邻,该方法过去已成功用于混沌时间序列预测。具有三个预测变量的k最近邻实现了71.40%的平均样本外分类准确率,而具有七个预测变量的线性对数回归的63.32%。结果表明,非线性方法可能会产生更简化的商品标志推断模型,并具有更高的样本外分类精度。此外,对于我们的大多数股票而言,观察到的市场订单提交规律似乎至少具有30个交易日的记忆。 (C)2004 Elsevier B.V.保留所有权利。

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