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Trainable Neural Networks Modelling for a Forecasting of Start-Up Product Development

机译:可训练的神经网络建模,用于预测启动产品开发

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In this article, components of the model of forecasting of IT products development of innovative start-up projects are considered based on the analysis of formed datasets of the interactions of prospective clients. We offered the algorithm of formation of initial datasets based on Customer Journey Map (CJM), which are the tool of fixing of events of the interaction of clients with the system. We propose to use the trainable neural network as a mechanism for processing big data sets and building IT product development strategies. We used a simple linear regression analysis to model the relationship between a single explanatory variable and a continuous response variable (dependent variable). An exploratory data analysis method was applied to the available data to find repetitive patterns and anomalies. In the course of the research, we constructed a model of linear regression implementation using the gradient optimisation approach. The linear models of the scikit-learn library for the regression task were also applied, and the stabilisation regression method was implemented. We have modelled and analysed the obtained results.
机译:在本文中,基于对潜在客户交互的形成数据集的分析,考虑了创新型启动项目的IT产品开发预测模型的组成部分。我们提供了基于“客户旅程图”(CJM)的初始数据集形成算法,该算法是解决客户与系统交互事件的工具。我们建议使用可训练的神经网络作为处理大数据集和建立IT产品开发策略的机制。我们使用简单的线性回归分析对单个解释变量和连续响应变量(因变量)之间的关系进行建模。探索性数据分析方法应用于可用数据,以找到重复的模式和异常。在研究过程中,我们使用梯度优化方法构建了线性回归实施模型。还使用了用于回归任务的scikit-learn库的线性模型,并实施了稳定回归方法。我们对获得的结果进行了建模和分析。

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