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The Random Neural Network in Price Predictions

机译:价格预测中的随机神经网络

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摘要

Everybody likes to make a good prediction, in particular, when some sort of personal investment is involved in terms of finance, energy or time. The difficulty is to make a prediction that optimises the reward obtained from the original contribution; this is even more important when investments are the core service offered by a business or pension fund generated by monthly contributions. The complexity of finance is that the human predictor may have other interests or bias than the human investor, the trust between predictor and investor will never be completely established as the investor will never know if the predictor has generated, intentionally or unintentionally, the optimum possible reward. This paper presents the Random Neural Network in recurrent configuration that makes predictions on time series data, specifically, prices. The biological model inspired by the brain structure and neural interconnections makes predictions entirely on previous data from the time series rather than predictions based on several uncorrelated inputs. The model is validated against the property, stock and Fintech market: 1) UK property prices, 2) stock markets indice prices, 3) cryptocurrency prices. Experimental results show that the proposed method makes accurate predictions on different investment portfolios.
机译:每个人都喜欢做出良好的预测,特别是当某些个人投资都参与金融,能量或时间。难度是使预测优化原始贡献中获得的奖励;当投资是由每月捐款产生的业务或养老基金提供的核心服务时更为重要。金融的复杂性是人类预测因素可能具有其他兴趣或偏见而不是人类投资者,预测因素和投资者之间的信任永远不会完全建立,因为投资者永远不会知道预测因素是否已经产生,故意或无意地,最佳报酬。本文介绍了经常性配置中的随机神经网络,使得时间序列数据的预测,具体而言,价格。由大脑结构和神经互连的启发的生物学模型在基于几个不相关的输入的时间序列而不是预测的预测中完全取决于先前的数据。该型号验证了财产,股票和金融科市场:1)英国房地产价格,2)股票市场污水货币价格,3)加密货币价格。实验结果表明,该方法对不同投资组合进行了准确的预测。

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