Constructing a Yield Curve in a Market with Low Liquidity

Sabit T. Khakimzhanov, Ye.S. Mustafin, Olzhas Kubenbayev, Dulat Atabek
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Abstract

Motivated by the shortcomings of the yield curve method used by the Kazakhstan Stock Exchange (KASE), we designed an algorithmic method of constructing a yield curve in a market with low and variable liquidity. We chose Nelson-Seigel as a curve and the ten most recent transactions in each subrange of maturity as the data. Both decisions stemmed from the constraints of an illiquid and inefficient market. The parsimony and rigidity of Nelson-Seigel proved useful when trades are few and prices are far apart. The choice of sampling is meant to produce enough sufficiently spaced observations, albeit at the expense of synchronicity. To provide the user better context for the curve and enable informed interpretation, we recommend supplementing the curves and their parameters with metrics of fit and age of the sample. Using the data from KASE, we computed the curve for each week starting from mid-2010 to end-2018 and made the results publicly available to provide access to interest rate data for analysts and to facilitate macroeconomic research.
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低流动性市场下收益率曲线的构造
鉴于哈萨克斯坦证券交易所(KASE)使用的收益率曲线方法的不足,我们设计了一种在低流动性和可变流动性市场中构建收益率曲线的算法方法。我们选择Nelson-Seigel作为曲线,每个期限范围内最近的10笔交易作为数据。这两项决定都源于流动性不足、效率低下的市场约束。尼尔森-西格尔的节俭和僵化在交易少、价格相差甚远的情况下被证明是有用的。采样的选择是为了产生足够间隔的观测,尽管以牺牲同步性为代价。为了向用户提供更好的曲线上下文并使其能够进行知情解释,我们建议用拟合和样本年龄的度量来补充曲线及其参数。使用KASE的数据,我们计算了从2010年年中到2018年底每周的曲线,并将结果公开,为分析师提供利率数据,并促进宏观经济研究。
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