Foreign Exchange Rate Volatility of Indian Rupee/ US Dollar

Author(s):  
Samsudheen K. Karuthedath ◽  
G. Shanmugasundaram
Author(s):  
Maroa Nasser Al Katheri

The economic and humanitarian conditions of the Yemeni population have been deteriorating. The variable that affects the Yemeni economy is the foreign exchange rate of the Yemeni currency. In 2014, one US Dollar equaled to 240 Yemeni Ryal. In 2018, one US Dollar equals 700 Yemeni Ryal. The massive leap of the value of the Yemeni Ryal against the US Dollar, paired with the stabilization of the public sector occupation salaries, deeply affected the quality of life of the Yemeni citizen. Furthermore, the leap of the Yemeni Ryal value leads to the increase of the merchandise prices as well as the price of public services. The decrease of the value of the Yemeni Ryal against the US Dollar is one variable that is assisting the levels of poverty in Yemen. However, this chapter believes that economic mismanagement and the foreign exchange rate are essential variables that explain the increase of poverty levels in Yemen.


2019 ◽  
Vol 9 (15) ◽  
pp. 2980 ◽  
Author(s):  
Muhammad Yasir ◽  
Mehr Yahya Durrani ◽  
Sitara Afzal ◽  
Muazzam Maqsood ◽  
Farhan Aadil ◽  
...  

Financial time series analysis is an important research area that can predict various economic indicators such as the foreign currency exchange rate. In this paper, a deep-learning-based model is proposed to forecast the foreign exchange rate. Since the currency market is volatile and susceptible to ongoing social and political events, the proposed model incorporates event sentiments to accurately predict the exchange rate. Moreover, as the currency market is heavily dependent upon highly volatile factors such as gold and crude oil prices, we considered these sensitive factors for exchange rate forecasting. The validity of the model is tested over three currency exchange rates, which are Pak Rupee to US dollar (PKR/USD), British pound sterling to US dollar (GBP/USD), and Hong Kong Dollar to US dollar (HKD/USD). The study also shows the importance of incorporating investor sentiment of local and foreign macro-level events for accurate forecasting of the exchange rate. We processed approximately 5.9 million tweets to extract major events’ sentiment. The results show that this deep-learning-based model is a better predictor of foreign currency exchange rate in comparison with statistical techniques normally employed for prediction. The results present evidence that the exchange rate of all the three countries is more exposed to events happening in the US.


2003 ◽  
Vol 2 (1) ◽  
Author(s):  
Mudji Utami ◽  
Heru Suprihhadi

The falling down of WTC building in US at September 11, 2001 give the seriously impact to the foreign exchange rate fluctuation, especially for the given countries around the world whose has deeply active transaction concern to US Dollar, including the countries in ASEAN region. The change of foreign exchange rate in ASEAN region not always appreciated but some of them turn to depreciated when it's ahead to US Dollar. This situation will influence the discrepancy on rate of return of US dollar in ASEAN countries, before and after the accident of September 11.According to our research, the result significantly explore the differentiation on rate return during seven days before and after the accident but there's no differentiation on rate of return during three days and the day after seven days from the accident.


2010 ◽  
Vol 230 (4) ◽  
Author(s):  
Christian Pierdzioch ◽  
Georg Stadtmann

SummaryExchange rates have been found to be more volatile than underlying macroeconomic fundamentals. Researchers have argued that the empirically observed high exchange-rate volatility may result from herd behavior of foreign-exchange traders and forecasters. We sketch a standard model that illustrates that herd behavior of foreign-exchange-rate forecasters may be rational. We then use survey data to test for herd behavior of forecasters. Our results suggest that exchange-rate-forecasters anti-herd and “lean against the wind” when forecasting exchange rates.


2016 ◽  
Vol 19 (03) ◽  
pp. 1650020 ◽  
Author(s):  
GUANGLI XU ◽  
SHIYU SONG ◽  
YONGJIN WANG

This paper derives a simple model to analyze foreign exchange rate behavior under a target zone regime. From the real market data of exchange rate of US Dollar (USD) to Hong Kong Dollar (HKD) (USD/HKD), somewhat surprisingly, we find that some of the observations fall outside the stated range. Consequently, a so-called skew CIR model for this exchange rate which has a probability of exceeding the stated boundary is developed. A spectral expansion approach is used to analyze the model. The valuation of the barrier and the one-touch options for the derivative written on the exchange rate is studied in the end.


Author(s):  
Masayuki Susai

Highly developed IT technology can be the source of volatility spillover between markets located in other countries. In this chapter, we investigate the interrelationship between stock returns in North East Asian countries and the effect of foreign exchange rate volatility on the interrelationship between stock returns. We bring out clear simultaneous interrelationship between stock return and foreign exchange volatility. Focusing on covariance of each asset returns, if we do not take foreign exchange rate volatility into account when we evaluate our international portfolio, the portfolio risk might be underevaluated. The analysis shows that foreign exchange market turbulence might be accompanied by increase in covariance between stock returns. Just after the Asian currency crisis, the relationship between stock returns and foreign exchange turbulence might have changed. For managing international portfolio risk, we should be aware of foreign exchange risk and structural change in covariance between stock returns.


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