تعیین نقاط چرخش در ادوار تجاری اقتصاد ایران با استفاده از الگوی خودبازگشتی سوئیچینگ مارکف * (1387:2-1367:1)
محورهای موضوعی : اقتصاد کار و جمعیتکامبیز هژبر کیانی 1 , علیرضا مرادی 2
1 - استاد دانشگاه آزاد اسلامی واحد علوم و تحقیقات تهران
2 - دانشجوی دکتری دانشگاه آزاد اسلامی واحد علوم و تحقیقات تهران
کلید واژه: ادوار تجاری, الگوی خودبازگشتی سوئیچینگ مارکف,
چکیده مقاله :
مقالۀ حاضر به بررسی تعیین نقاط چرخش در ادوار تجاری در اقتصاد ایران با استفاده از دادههای فصلی در دورۀ زمانی (1387:2-1367:1) میپردازد و برای عملی ساختن این مهم از رهیافت الگوی خودبازگشتی سوئیچینگ مارکف ارائه شده توسط همیلتون (1989)استفاده میکند. نتایج بدست آمده حکایت از آن دارد که در طی دورۀ یاد شده در سه مقطع زمانی، چهار رکود اتفاق افتاده است، طولانی ترین این رکودها در دورۀ زمانی [1372:2- 1371:2] با تداوم هفت فصل ظهور کرده است. نتایج بدست آمده بر این دلالت دارد که در دورۀ مورد بررسی هر بار وقوع رکود، بطور متوسط 74/1 فصل تداوم داشته است. این در حالی است که بروز هر دورۀ رونق در دورۀ مورد بررسی در اقتصاد ایران 66/6 فصل ادامه یافته است
This study was to investigate, turning points in Business Cycles in the economy of Iran using seasonal date during (1981:1-2008:2). To make it practical Autoregressive Markov Switching Model by Hamilton (1989) was used. Today this approach is used in many advanced countries in order to identify and dating of cycle. Results showed that in that period in three junctures four records happened. The longest records are during [1991:2-1998:2], with the duration of 7 seasons. In addition to that results showed that in under discussion period every time a record happens in countries for about 1.74 seasons. While the appearance of every Boom in under discussion period in the economy of Iran continued 6.66 seasons.
منابع:
ــ عباسی نژاد، حسین و شاپور محمدی.تحلیل سیکلهای تجاری ایران با استفاده از نظریۀ موجکها، مجلۀ تحقیقات اقتصادی، شماره75: 1-20.
ــ هژبر کیانی کامبیز و علیرضا مرادی (1388).تخمین تولید بالقوه و شکاف تولید با استفاده از رهیافتهای فیلترینگ. مجلۀ علمی پژوهشی پژوهشنامۀ علوم اجتماعی و انسانی دانشگاه مازندران، شماره 12: 300-320.
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پیوست الف: خروجی نرم افزار MATLAB برای تخمین الگوی خودبازگشتی سوئیچینگ مارکف
تخمین حداکثر راستنمایی پارامترهای الگوی خودبازگشتی سوئیچینگ مارکف از رشد تولید فصلی کشور ایران |
-------- EM algorithm converged after 99 iterations ------------ EQ(1) MSM(2)-AR(1) model of DLGDP Estimation sample: 1367 (1) - 1387 (2) no. obs. per eq. : 82 no. parameters : 10 linear system : 2 no. restrictions : 1
---------- matrix of transition probabilities ------ Regime 1 Regime 2 Regime 1 0.8500 0.7480 Regime 2 0.1490 0.2510 ---------- regime properties ---------------------- nObs Prob. Duration Regime 1 69.7 0.8500 6.66 Regime 2 12.3 0.2510 1.33 ---------- coefficients ---------------------------- Coef StdError t-val Mean (Reg.1) 2.2221 0.9308 2.3873 Mean (Reg.2) -0.2607 0.6294 -0.4142 DIRGDP_1 -0.5455 0.4891 -1.1153 DIRGDP_2 0.8784 0.2013 4.3636
Sum log likelihood for Normal distribution - MS(2)-Ar(1)-->-216.6122 Sum log likelihood for Normal distribution - MS(2)-Ar(1)-->-216.6122 Sum log likelihood for Normal distribution - MS(2)-Ar(1)-->-216.6122 Sum log likelihood for Normal distribution - MS(2)-Ar(1)-->-216.6122 Sum log likelihood for Normal distribution - MS(2)-Ar(1)-->-216.6122 Sum log likelihood for Normal distribution - MS(2)-Ar(1)-->-216.6122 Sum log likelihood for Normal distribution - MS(2)-Ar(1)-->-216.6122 Sum log likelihood for Normal distribution - MS(2)-Ar(1)-->-216.6122 Sum log likelihood for Normal distribution - MS(2)-Ar(1)-->-216.6122 Sum log likelihood for Normal distribution - MS(2)-Ar(1)-->-216.6122 Sum log likelihood for Normal distribution - MS(2)-Ar(1)-->-216.6122 Sum log likelihood for Normal distribution - MS(2)-Ar(1)-->-216.6122
***** MS Optimizations terminated. *****
Final log Likelihood: -216.6122 Number of parameters: 10
-----> Final Parameters <-----
Parameters in State 1:
AR param -> -0.54549 AR param (Std)-> 0.48916 Constant -> 2.2221 Constant (Std)-> 0.93085 Std Dev -> 3.2532 Std Dev (Std)-> 0.6224
Parameters in State 2:
AR param -> 0.87836 AR param (Std)-> 0.2013 Constant -> -0.2607 Constant (Std)-> 0.62946 Std Dev -> 1.3126 Std Dev (Std)-> 0.88861
------> Transition Probabilities Matrix <----- 0.850 0.748 0.149 0.251
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