MODELING OF FARMER EXCHANGE RATE IN ACEH PROVINCE USING LONGITUDINAL DATA ANALYSIS

M. Miftahuddin, Ziqratul Husna, Eddy Gunawan, Syawaliah Muchtar
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Abstract

Farmer's Exchange Rate (FER) is one indicator to see the level of farmers' welfare. From 2014 to 2020, Aceh Province's FER was below 100 which indicates that farmers have not yet reached the level of welfare. This happens because of various factors including the price received by farmers (IR) is smaller than the price paid by farmers (IP). To find out the factors that influence the FER, it is necessary to do an analysis by forming a model. In this study, modeling of the FER data will be carried out, and see the factors that influence the index number with the longitudinal data regression approach. There are three estimation models, i.e. Common Effect Model, Fixed Effect Model, and Random Effect Model. Model selection of the best model is by using the Chow, Hausman, and Lagrange Multiplier tests. Furthermore, test the significance of the parameters using the simultaneous and partial tests and also see the value of the coefficient of determination (R2). The results obtained indicate that the appropriate model for the IR and IP data is the Random Effect Model where the R2for the IR and IP models are 67.06% and 85.42 respectively.
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利用纵向数据分析建立亚齐省农民汇率模型
农民汇率(FER)是衡量农民福利水平的指标之一。从 2014 年到 2020 年,亚齐省的 FER 一直低于 100,这表明农民尚未达到福利水平。出现这种情况的原因有很多,包括农民获得的价格(IR)低于农民支付的价格(IP)。为了找出影响 FER 的因素,有必要通过建立模型来进行分析。本研究将对 FER 数据进行建模,通过纵向数据回归法了解影响指数的因素。有三种估计模型,即共同效应模型、固定效应模型和随机效应模型。通过周检验、豪斯曼检验和拉格朗日乘数检验来选择最佳模型。此外,还使用同时检验和部分检验来测试参数的显著性,并查看决定系数(R2)的值。结果表明,适合 IR 和 IP 数据的模型是随机效应模型,其中 IR 和 IP 模型的 R2 分别为 67.06% 和 85.42。
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