ببررسی اثرات متقابل گواهی سپرده کالایی و آتی زعفران در بورس کالای ایران

نوع مقاله : مقاله پژوهشی

نویسندگان

1 دانشجوی دکتری اقتصاد،دانشکده مدیریت و حسابداری، واحد قزوین، دانشگاه آزاد اسلامی، قزوین، ایران.

2 استادیار اقتصاد، دانشکده مدیریت و حسابداری، واحد قزوین، دانشگاه آزاد اسلامی، قزوین، ایران.

چکیده

مقدمه و هدف: با معرفی گواهی سپرده کالایی در بورس کالای ایران، این پژوهش با عنایت به فقدان مطالعه در حوزه گواهی سپرده زعفران، سعی در شناخت عوامل موثر بر آن و از جمله تأثیر قیمت آتی زعفران با استفاده از بررسی وجود رابطه علیت خطی و غیر خطی در راستای شناخت مکانیسم کشف قیمت در بازار زعفران می­کند.
مواد و روش­ها: داده­های روزانه در بازه زمانی خرداد ماه 1397 تا پایان تیرماه 1398 اخذ شده و از نوسانات قیمتی گواهی سپرده کالایی و قیمت آتی ها استفاده شده است. روش پژوهش توصیفی- تحلیلی و روش گردآوری داده­ها کتابخانه ای با استفاده از روشهای اقتصاد سنجی، مدل های رگرسیونی و مفهوم شبکه‌های عصبی به کمک نرم افزارهای  EviewsوR صورت گرفته است.
یافته­ها: نتایج نشان می‌دهد که رابطه علیت خطی بین نوسانات قیمت گواهی سپرده و قیمت آتی وجود دارد و این رابطه دوطرفه است. برای بررسی وجود علیت غیرخطی با استفاده از پسماند بدست آمده مدل VAR بین دو متغیر مورد بررسی و استفاده از آزمون BDS وجود یک رابطه غیر خطی بین متغیرها اثبات شد.
بحث و نتیجه­گیری: با توجه به جهت علیت قیمت­ها از آتی ها به بازار نقد، نتایج این پژوهش نشان می‌دهد که بازار آتی نقشی تعیین کننده در قیمت بازار نقد دارد و بنابراین، کشف قیمت در بازار آتی­ها شکل می گیرد و بازار گواهی سپرده از بازار آتی تبعیت می­کند.

کلیدواژه‌ها


عنوان مقاله [English]

Investigation the Reciprocal Effects of Saffron warehouse Receipt and Saffron Future Contracts in Iran Mercantile Exchange (IME)

نویسندگان [English]

  • SEYED MEYSAM JALILI 1
  • AKBAR MIRZAPOUR BABAJAN 2
  • Beitollah Akbari Moghadam 2
  • Arash Hadizade Miyarkolaee 2
1 Accounting & Management , Qazvin Islamic Azad University, Qazvin, Iran
2 Assistant Proffesor, Faculties Accounting & Management , Qazvin Islamic Azad University, Qazvin, Iran.
چکیده [English]

Introduction: The Present article examines factors that have effect on saffron warehouse receipt and on saffron futures in Iran commodity exchange. This study tries to identify the import of saffron future price and the two-way communication between these two financial instruments (saffron warehouse receipt and saffron futures) to saffron market.
Materials and Methods: In this regard, this study seeks to answer the existence of the relationship between linear and non-linear causality between these two financial instruments. The data were obtained daily in the period from June 2018 to July 2019 using price fluctuations in saffron warehouse receipt and saffron futures. Descriptive – analytical research methods and library data collection methods, regression models and the concept of neural networks with the help of Eviews software and R Economic Statistical Software were used. The price fluctuations of saffron warehouse receipt have been extracted using Arch family models.
Findings: Results indicate that there is a two linear causality relationship between warehouse receipt’s price fluctuation and future’s price fluctuation. To investigate the existence of non-linear causality between the two under studied, variables VAR model residual was used. The BDS test result show the existence of a non-linear relationship between the mentioned variables. The results of the non-linear granger causality test based on neural network show that futures price are the cause for price fluctuations in saffron warehouse receipt.
Conclusion: It can be stated that price discovery is formed in saffron future market and saffron warehouse receipt market follows the futures market.

کلیدواژه‌ها [English]

  • warehouse Receipt
  • Futures
  • Price Fluctuations
  • Non-Linear Granger Causality
  • Neural Network
 

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