标题: | 以类神经网路模式探讨住宅房价影响因子之研究 A Study Affecting Factors for the Residential Property Value using Artificial Neural network models |
作者: | 李宗霖 洪士林 Lee,Tsung-Lin Hung, Shin-Lin 工学院工程技术与管理学程 |
关键字: | 住宅房价影响因子;类神经网路;敏感度分析;Affecting Factors for the Residential Property;Artificial Neural Network;Sensitivity analysis |
公开日期: | 2016 |
摘要: | 台湾房屋价格多数倚赖专家经验判断,但是依据条件每个人主观的认知不尽相同,也由于交易资讯的不透明化,造成房价的不健全,所以要如何找到影响房价的因子,是许多研究的方向。本研究以倒传递类神经网路进行台北市南港区住宅房屋价格之预测。经文献回顾方式,找出影响住宅房价的15个影响因子作为输入变数。在输入倒传递类神经网路前,先进行数据筛选及正规化,经过164组训练案例及39组测试案例后,达到81.81%的精度,显示房价是与影响因子存在某种关联。最后将训练结果再进行敏感度分析,找出实际影响台北南港区房屋价格之因子。研究结果显示,对南港区房价较具有影响性的因子有3个,分别为总楼层数、建筑物公设比、距离国中的远近。然而在15项因子中敏感度分析相对最低的2个因子,删除国小距离及景气指标二个因子后,输入类神经网路后完成收敛,显示剩下的13个房价影响因子,对于类神经网路都有重要的影响性。 Taiwan housing prices in most rely expertise judgment, but on the basis of subjective cognitive conditions of each person are not the same. But also because the transaction information is not transparent, resulting in prices is not perfect. So how to find the factors that affect housing prices, many research direction. In this study, back-propagation neural network to predict the price of residential houses Nangang District, Taipei City. By way of literature review to identify the impact of residential housing prices 15 factor as input variables. Before entering back-propagation neural network, the first for data filtering and normalization, after 164 cases and 39 sets of training after a set of test cases, reached 81.81% accuracy, showing the price is associated with the existence of a factor. Finally, the training results then sensitivity analysis to identify the real impact factor Taipei Nangang District house price. The results show, for the Nangang District has an impact on property prices rose by more factors have three, respectively, where the total number of floors, the ratio of public buildings, and the distance between the two countries. However, in the 15 factors in the sensitivity of the two relatively low number of factors, the deletion of the small distance and the climate index two factors, the input type of neural network to complete the convergence, showing the remaining 13 house price impact factors for the class of neural networks The road has an important influence. |
URI: | http://etd.lib.nctu.edu.tw/cdrfb3/record/nctu/#GT070061202 http://hdl.handle.net/11536/140638 |
显示于类别: | Thesis |