Peruvian evidence of the efficiency of technical analysis on the Lima Stock Exchange
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DOIhttp://dx.doi.org/10.21511/imfi.21(4).2024.24
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Article InfoVolume 21 2024, Issue #4, pp. 301-313
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In emerging markets such as the Lima Stock Exchange, characterized by lower liquidity and market depth, investors face unique challenges in maximizing returns and mitigating risks. This study aims to evaluate the efficiency of technical analysis on the Lima Stock Exchange, focusing on 14 stocks from the S&P/BVL Peru General portfolio selected for their broad spectrum of economic sectors, high trading frequency, and consistency in the index, totaling 9,802 quotations during the period from June 21, 2021 to June 21, 2024. The results, excluding transaction costs, show that technical tools such as Momentum, Moving Averages, Stochastic Oscillator, and Williams Oscillator offer superior returns compared to the buy-and-hold strategy, especially in short periods of 5, 10, and 15 days, with average excess returns of 24.28%. However, when including transaction costs, only eight of the 14 stocks achieve excess returns, with the Relative Strength Index (RSI), Bollinger Bands, and Moving Averages standing out as the most efficient tools, especially over longer periods. These findings underscore the importance of careful management of transaction costs to optimize the benefits of technical analysis in emerging markets.
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JEL Classification (Paper profile tab)G11, G14, G15
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References41
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Tables11
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Figures0
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- Table 1. Stocks from the S&P LSE Peru General Index that make up the sample
- Table 2. Moving averages (MA): Average annual return per stock, excluding transaction costs
- Table 3. Moving averages (MA): Average annual return per stock, including transaction costs
- Table 4. Momentum: Average annual return per stock, exclusion of transaction costs
- Table 5. Momentum: Average annual return per stock, including transaction costs
- Table 6. Relative Strength Index (RSI): Average annual return per stock
- Table 7. Stochastic oscillator (%K): Average annual return per stock
- Table 8. Williams %R Oscillator: Average annual return per stock
- Table 9. Bollinger bands: Average annual return per stock
- Table 10. Tools generating the best average annual returns per stock excluding transaction costs
- Table 11. Tools generating the best average annual returns per stock, including transaction costs
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