تغییرات توزیعی بازده داراییهای مالی در دورههای قبل و بعد از کووید 19 بر پایه قانون توانی، تابع نمایی کشیده و توابع q-گوسی
محورهای موضوعی : بورس اوراق بهاداررسول رضوانی 1 , غلامرضا عسکرزاده 2
1 - گروه مهندسی مالی، واحد یزد، دانشگاه آزاد اسلامی، یزد، ایران
2 - گروه مدیریت مالی، واحد یزد، دانشگاه ازاد اسلامی، یزد، ایران
کلید واژه: توزیع بازده, قانون توانی, داراییهای ریسکی,
چکیده مقاله :
شناسایی رفتار توزیعی بازده داراییهای ریسکی از ضروریاتی است که توجه بسیاری از محققان را به خود جلب کرده است. چرا که آگاهی و شناخت دقیقتر رفتار توزیعی بازده در انها، امکان انجام پیش بینیهای دقیقتر از وضعیت آتی بازار را فراهم میکند، به خصوص در تعیین ارزش در معرض ریسک این داراییها که وابستگی مستقیم با شکل توزیعی بازده دارد.هدف پژوهش حاضر بررسی تغییرات توزیعی بازده داراییهای مالی در دورههای قبل و بعد از کووید 19 بر پایه قانون توانی، تابع نمایی کشیده و توابع q-گوسی است. در این راستا، 3 متغیر شاخص کل بورس، قیمت طلا و نرخ ارز مورد بررسی و اطلاعات مربوط به آنها در هریک از روزهای معاملاتی طی دوره 07/01/1395 تا 29/10/1401 جمع آوری شد. به منظور آزمون فرضیات، بااستفاده از آزمون کلموگروف-اسمیرنوف، به مقایسه توزیع تجربی بازدهها با هریک از توزیعهای مذکور پرداخته شد. نتایج نشان داد که توزیعهای لگاریتمی این داراییها از هیچ یک از توزیعهای احتمال حاصل از قانون توانی، نمایی کشیده و q-گاوسی تبعیت نمیکنند.
Identifying the distributional behavior of returns of risky assets is one of the necessities that has attracted the attention of many researchers. Because a more accurate knowledge and understanding of the distribution behavior of returns in them allows for more accurate predictions of the future state of the market, especially in determining the risk-exposed value of these assets, which has a direct relationship with the distribution form of returns. The aim of the current research is to investigate the distributional changes of financial asset returns in the periods before and after covid-19 based on power law, stretched exponential function and Gaussian q-functions.In this regard, 3 variables: stock market index, gold price and exchange rate were investigated and their related Information was collected in each of the trading days during the period of 2016-03-26 to 2023-01-19 .In order to test the hypotheses, by using the Kolmogorov-Smirnov test, the empirical distribution of returns was compared with each of the mentioned distributions. The results showed that the logarithmic distributions of these assets do not follow any of the probability distributions obtained from the power law, stretched exponential and q-Gaussian.
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