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Le marché de l'aluminium : structuration et analyse du comportement des prix au comptant et à terme au London Metal ExchangeMouak, Prosper 03 March 2010 (has links) (PDF)
Dans les années 60 et avant, le marché international de l'aluminium était présenté comme un cas d'école en matière d'organisation oligopolistique des firmes. En effet, un petit nombre de grands groupes fortement intégrés (les 6 Majeurs) contrôlaient la quasi-totalité du secteur de l'aluminium, des opérations d'extraction de la bauxite, à la fabrication de produits finis à base d'aluminium, en passant par la production d'alumine et d'aluminium en lingots. A partir des années 70, ce monopole est de plus en plus contesté, notamment par des entreprises sur-liquides venues principalement des secteurs miniers et par des entreprises étatiques porteuses de motivations différentes. La création en décembre 1978 du contrat Aluminium au London Metal Exchange (LME) sonne le glas du monopole constitué par les 6 Majeurs. On passe alors d'un système de prix- producteurs, à un véritable système de prix de marché L'objectif de cette thèse est de vérifier, si le LME, bourse pionnière et marché de référence pour les métaux non-ferreux, remplit efficacement ses fonctions financières concernant l'aluminium : Information sur les prix et l'état du marché, protection contractuelle contre les risques de fluctuations des prix, stabilisation des cours.
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Random-bonds Ising models, quantum localisation and critical behaviour in two dimensionsMerz, Florian January 2002 (has links)
No description available.
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Pricing and spread components at the Lima Stock ExchangeChávez Bedoya, Luis, Loaiza Álamo, Carlos, Giannio Téllez De Vettori, Universidad Peruana de Ciencias Aplicadas (UPC) 18 August 2015 (has links)
This paper analyses three aspects of the share market operated by the Lima Stock
Exchange: (i) the short-term relationship between the pricing, direction and volume of
order flows; (ii) the components of the spread and the equilibrium point of the limit order
book per share, and (iii) the pricing, order direction and trading volume dynamic resulting
from shocks in the same variables when lagged. The econometric results for intraday
data from 2012 show that the short-run dynamic of the most and least liquid shares
in the General Index of the Lima Stock Exchange is explained by the direction of order
flow, whose price impact is temporary in both cases.
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Heat transfer in inundation and drainage flows associated with power condensersHowell, Christopher John January 1992 (has links)
No description available.
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Polyfluorinated alkenes and alkynesEdwards, Andrew R. January 1997 (has links)
The research described within this thesis may be divided into four main subject areas: 1) The use of (Z)-2H-heptafluorobut-2-ene (10) as a synthon for hexafluorobut- 2-yne (4) in Diels-Alder reactions was investigated. Novel 'one-pot' routes to a variety of bis(trifluoromethyl) substituted furan and arene derivatives were discovered, along with the synthesis of the novel diene, bis(trifluoromethyl)cyclopentadiene (46), from cyclopentadiene.2) A variety of nucleophiles were successfully reacted with (10), the products of which were identical to those that have been, or would be expected to be, formed from the reaction of the same nucleophile with (4). A novel route to a fluorinated quinoline derivative was also discovered.3) Perfluoroperhydrophenanthrene (74) was used as a 'bulking agent' to replace the hydrocarbon solvent used in halogen exchange reactions for the preparation of octafluorocyclopentene (3), chlorofluoro -pyridine, -pyrimidine, and -benzene derivatives. New 'one-pot' syntheses of hexafluorobut-2-yne (4), octafluorobut-2-ene (6) and hexafluorocyclobutene (2) were also discovered.4) Various routes were explored in an attempt to improve the present literature preparations of tetrafluoropropyne (79), including pyrolysis and elimination methods. Tetrafluoroallene (81), and trace amounts of (79), were found to be formed on the elimination of hydrogen fluoride from 2H-pentafluoropropene (5).
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Die vooruitskatting van wisselkoerse : 'n kritiese evaluering05 August 2014 (has links)
M.Com. / Please refer to full text to view abstract
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'n Kritiese evaluering van ioonchromatografiese metodes vir die bepaling van Cr(III) en Cr(VI) in industriële afloop12 February 2015 (has links)
M.Sc. (Chemistry) / Please refer to full text to view abstract
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'n Empiriese ontleding van die verband tussen die randwisselkoers en die goudprys16 April 2014 (has links)
M.Com. (Economics) / The gold sector has historically made an extremely important contribution to the total external revenue earnings of South Africa. Gold is traded on the international markets at a price which is determined daily through supply and demand and quoted in American dollar terms. South Africa is one of the largest producers of gold in the world and despite this it has no control over the international gold price. Local producers get paid in rands for their production. Because the international gold price is determined in American dollar terms and local producers get paid in rands the exchange rate is extremely important to local gold producers. If the dollar/gold price is compared to rand/dollar gold price in the long term there is a definite pattern. From 1980 to 1990 it can clearly be seen that if the gold price rises or declines the exchange rate has depreciated or appreciated. Since 1990 the dollar/gold price declined steadily until 1993 when it recovered somewhat. The rand exchange rate has not in the past depreciated in relation to the decline in the gold price. A sharp depreciation of the rand since 1990 has been experienced. The question that arises is that has the deviation in the long term relation between the rand/dollar exchange rate and the gold price since 1990 just been temporary in nature or was there a fundamental change? Since 1990 the dollar/gold price has declined from American $383.55 to $324.86 in October 1997. Over the same period the rand has depreciated from 258.17 cent to 470.90 cents for a dollar. Over the whole period the rand has hardly shown signs of appreciation whilst there were sporadic increases in the gold price. Government policy changed in 1990 and the focus moved to inflation control. A sharp increase of nett capital from South Africa was noted since 1990.
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The relationship between the South African Rand and commodity prices: examining cointegration and causality between the nominal classesNdlovu, Xolani 28 November 2011 (has links)
We employ OLS analysis on a VAR Model to test the “commodity currency” hypothesis
of the Rand (i.e. that the currency moves in sympathy with commodity prices) and examine
the associated causality using nominal data between 1996 and 2010. We address the
question of cointegration using the Engle-Granger test. We find that level series of both
assets are difference stationary but not cointegrated. Further, we find the two variables
negatively related with strong and significant causality running from commodity prices to
the exchange rate and not vice versa, implying exogeneity to the determination of commodity
prices with respect to the nominal exchange rate. The strength of the relationship is
significantly weaker than other OECD commodity currencies. We surmise that the
relationship is dynamic over time owing to the portfolio-rebalance argument and the
Commodity Terms of Trade (CTT) effect and in the absence of an error correction
mechanism, this disconnect may be prolonged. For commodity and currency market
participants, this implies that while futures and forward commodity prices may be useful
leading indicators of future currency movements, the price risk management strategies may
need to be recalibrated over time. For monetary policy makers, to manage commodity price
risk and concentration risk on the country’s exports, we suggest establishment of a selfinsurance
scheme such as a Commodity Stabilisation Fund established in Chile in 1985.
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Forecasting models for the dollar/rand spot rates.Gcilitshana, Lungelo. January 1998 (has links)
A research report submitted to the Faculty of Science, University of the Witwatersrand,
Johannesburg, South Africa, in partial fulfillment of the requirements for the Degree of Masters of Science. / Owing to the complexity of hedging against the unfavourable price movements, derivatives came
into being to solve this problem if used in an effective and appropriate manner. Movements in
share or stock prices, foreign exchange rates, interest rates, etc., make it difficult to anticipate or
guess the next price or exchange rate or interest rates. Hence hedging ones'self against these
movements becomes a hurdle that is difficult to overcome. Coming to the fore of the derivatives
markets made a relief to many traders, but still then, no one could be certain about the move of
the market which he is trading in. Forecasting appeared as an educated guess as to which
direction and by how much the market will move.
This research report focusses on how to forecast the foreign exchange rates using the
Dollar/Rand as an example. I have gathered the historical daily data for the DoIIar/Rand spot rates
which includes the mayhem period that happened in February 1996. The data was obtained from
one of the biggest banks of South Africa; it was drawn from the Reuters historical data giving the
open, high, low and close prices of the Dollar/Rand (USD/ZAR) spot rates. The data was then
downloaded and copied to the spreadsheet for the calculation of the historical volatilities for
different periods. To have a genuine comparison with the implied volatilities, a data of historical
implied volatilities tor approximately the same period was gathered from the SAIMB (South
African International Money Brokers). The only snag with the data was that it only catered for
specific traded periods, like 1 month, 2 months, 3 months, 6 months, 9 months and 12 months
only. Most financial institutinns are using these implied volatilities for their pricing and end-of-day
or -month or -year revaluation. By the same token the data was downloaded to the spreadsheet
for further analysis and arrangement.
Chapter 1 gives the purpose and the meaning of'forecasting, together with different methods that
this process can be achieved. Views from Makridakis et al., (1983) are used to beautify the world
of forecasting and its importance. In Chapter 2 the concept of volatility and its causes, is
discussed in detail. Besides the implied and historical volatility discussions, volatility 'smile'
concept is discussed and expanded. Volatility slope trading strategies and constraints on the slope
of the volatility term structure are discussed in detail.
Chapter 3 discusses different models used to calculate both the historical and the implied
volatility. This includes models by Kawaller et al., (1994) and Figlewski et al., ( 1990). The
Newton-Raphson method is among of the methods that can be used to get a good estimate of the
implied volatility. For a lot accurate estimates the Method of Bisection can be used in place of the
Newton-Raphson method. Mayhew (1995) even suggest a method, which involves the use of
more weighting with higher vegas (Latane and Rendleman 1976) or weighting not by vegas but
elasticity (Chiras and Manaster 1978).
Chapter 4 dwells on different forecasting models for foreign exchange markets. This includes
models by Engle (1993), who is one of the pioneers of the autoregression theory, He discusses the
ARCH, GARCH and EGARCH models; Heynen et al., (1994,1995) discusses the models for the
term structure of volatility implied by foreign exchange. In the 1995 article he dwells on the
specifications of the different autoregressive conditional heteroskedastic models. U.A. Muller et
al., (1990,1993) discusses some of the models for the changing time scale for short-term
forecasting in financial markets. This includes discussion of some statistical properties of FX rates
time-series. Xu and Taylor (1994) also discuss the term structure of volatility as implied, in
particular, by FX options. Regression is used in computation of implied volatility
Chapter 5 dwells on the empirical evidence and the market practice. This includes the statistical
analysis of the data; applying the scaling law; proprietary model which depicts the edge between
the historical volatility and implied volatility; empirical tests and the volatility forecast evaluation
applied to historical USD/ZAR daily data, using different models.
In the statistical analysis, using U.A. Muller et al., (1993) theory, the scaling law, which involves
the absolute price changes, which are directly related to the interval At, is discussed. Using my
GSD/ZAR data Imanaged to calculate the parameters described by the scaling law, using At as
one day since my data is a daily data Icould not calculate the activity model function, which
calculates the intra-day and intra-hour trading using tick-by-tick data, because of the nature of my
data. Had it not been the case, f would have been able to calculate the intra-day and intra-hour
volatilities. These statistics would have been able to depict the daily volatility, more especially on
volatile days, like the day when the Rand took its first knock in February 1996.
In the second section of the chapter the proprietary model is discussed, where an edge between
the actual volatility and implied volatility was identified. There is a positive correlation between
the actual and implied volatility although the latter is always higher than the former; hence traders
can play with this situation for arbitrage purposes. To get the estimates of historical volatility, I
used the Well-known formula of using the log-relatives of the returns of any two consecutive days.
Annnalised standard deviation of these log-relatives resulted into the required historical volatility
estimates. Moving averages were used to get estimates of different periods, as can be seen in the
text.
The main theme of the research report is to expose forecasting models that can be used in foreign
exchange currencies using DolIar/Rand as an example. Random walk model was used as
benchmark to other models like stochastic volatility, ARCH, GARCH( 1,1), and EGARCH (1,1).
Due to the complexity of the specifications of these models, I used the SHAZAM 7.0 econometric
program to generate the necessary parameters. Complex formulas of these models are given in the
Appendices at the end of the report, together with the program itself.
The significance of the forecasted volatility estimates was checked using the p-value correlation
statistic and the Akaike Information Criterion (AIC). The p-value gives us the significance of the
parameters and the AlC gives us an indication of the goodness-of-fit of the model. The formulas
used to calculate these statistics are given at the end of the report as part of the Appendices. An
account of where and how shese results can be of help in the practical situation is given under the
section of market practice. One of the areas worth mentioning is in risk management, where
estimates of the historical volatility can be used together with correlation in risk-metrics to
calculate VArt (value-at-risk). VAR is defined in simple terms as the 5thpercentile (quantile) of
the distribution of value changes. The beau.y of working with the percentile rather than, say the
variance of a distribution, is that a percentile corresponds to both a magnitude e.g., dollar amount
at risk, and exact probability e.g., the probability that the magnitude will not be exceeded. This
roughly the gist of the research report. / Andrew Chakane 2018
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