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The impact of weight matrices on parameter estimation and inference: A case study of binary response using land-use data

机译:权重矩阵对参数估计和推断的影响:使用土地利用数据的二元响应的案例研究

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This paper develops two new models and evaluates the impact of using different weight matrices on parameter estimates and inference in three distinct spatial specifications for discrete response. These specifications rely on a conventional, sparse, inverse-distance weight matrix for a spatial auto-regressive probit (SARP), a spatial autoregressive approach where the weight matrix includes an endogenous distance-decay parameter (SARPα), and a matrix exponential spatial specification for probit (MESSP). These are applied in a binary choice setting using both simulated data and parcel-level land-use data. Parameters of all models are estimated using Bayesian methods.In simulated tests, adding a distance-decay parameter term to the spatial weight matrix improved the quality of estimation and inference, as reflected by a lower deviance information criteriaon (DIC) value, but the added sampling loop required to estimate the distance-decay parameter substantially increased computing times. In contrast, the MESSP model’s obvious advantage is its fast computing time, thanks to elimination of a log-determinant calculation for the weight matrix. In the model tests using actual land-use data, the MESSP approach emerged as the clear winner, in terms of fit and computing times. Results from all three models offer consistent interpretation of parameter estimates, with locations farther away from the regional central business district (CBD) and closer to roadways being more prone to (mostly residential) development (as expected). Again, the MESSP model offered the greatest computing-time savings benefits, but all three specifications yielded similar marginal effects estimates, showing how a focus on the spatial interactions and net (direct plus indirect) effects across observational units is more important than a focus on slope-parameter estimates when properly analyzing spatial data.
机译:本文开发了两个新模型,并评估了在离散响应的三个不同空间规格中使用不同权重矩阵对参数估计和推断的影响。这些规范依赖于用于空间自回归概率(SARP)的常规稀疏逆距离权重矩阵,空间自回归方法(其中权重矩阵包括内生距离衰减参数(SARPα))和矩阵指数空间规范用于概率(MESSP)。这些参数使用模拟数据和地块级土地利用数据在二元选择设置中应用。所有模型的参数都使用贝叶斯方法进行估计。在模拟测试中,将距离衰减参数项添加到空间权重矩阵可以提高估计和推断的质量,这体现在较低的偏差信息标准(DIC)值上,但是估计距离衰减参数所需的采样环大大增加了计算时间。相比之下,MESSP模型的明显优势是计算时间短,这是由于消除了权重矩阵的对数决定因素计算。在使用实际土地使用数据的模型测试中,MESSP方法在拟合和计算时间方面脱颖而出,成为了明显的赢家。所有这三个模型的结果都对参数估计值提供了一致的解释,其位置离区域中央商务区(CBD)更远,并且距离道路更近(如预期的那样)更容易(主要是住宅)开发。再次,MESSP模型提供了最大的计算时间节省效益,但是所有三个规范都产生了相似的边际效应估计值,这表明关注于观测单元之间的空间相互作用和净(直接与间接)影响比关注于观测单元更重要正确分析空间数据时的斜率参数估计。

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