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引入情绪的时间序列动量策略

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针对近期研究指出的投资者情绪对资产定价、动量效应的显著影响,提出构建引入情绪的时间序列动量策略。具体的,以中小企业100指数成分股为实证数据,运用主成分分析法通过市场指标合成投资者情绪指数,并将情绪指数引入到时间序列动量策略的构建中,分析引入情绪之后的策略收益提升。实证结果表明:本文构建的投资者情绪指数与中小企业100指数收益率走势一致且对未来收益率存在显著影响;将情绪引入到策略的构建之后,显著增加策略的收益,且新策略收益显著超越买入-持有策略。进一步实证表明,新策略的优越性对不同长度的投资期限、不同的情绪指数构建方法以及不同的买卖信号确定方法均稳健。研究首次将投资者情绪引入到时间序列动量策略的构建中,不仅可以指导投资者资产配置的实务应用,对量化投资研究也有重要意义。
Sentiment-based Time Series Momentum Strategy
Momentum effect is one of the most typical market anomalies.The effectiveness of cross-sectional momentum strategies and time series momentum strategies has been verified in many studies.With the develop-ment of behavioral finance,the significant impact of investor sentiment on asset pricing and momentum effect has been pointed out in recent studies.Some researchers have improved the cross-sectional momentum strategies and the mean reversion strategies by incorporating investor sentiment,but no studies have attempted to introduce investor sentiment into the construction of time series momentum strategies.Therefore,this paper proposes to construct sentiment-based time series momentum strategies,so as to provide investors with potentially profitable investment opportunities.As for the benchmark time series momentum(TSM)strategy,we use the arithmetic average of historical returns to generate trading signals.Specifically,for each instrument i and month t,we consider whether the excess return over the past J months is positive or negative and go long if positive and short if negative at the end of the month,holding the position for K months.Here J is referred to as the length of the formation period,and K is referred to as the length of the holding period.For each trading strategy with time parameter(J,K),the strategy return during month t is the average return across all"active"portfolios,namely the average return on the portfolios that were constructed last month,the month before(if still held in month t),and so on.While constructing our sentiment-based time series momentum(STSM)strategy,we use the Sharp Ratio difference of the benchmark TSM strategy during the high sentiment period and the low sentiment period(ΔSR)to adjust the position longed and shorted in the benchmark TSM strategy.Specifically,in the high sentiment period,if the TSM trading signal is"long",we should increase the long position by ΔSR;if the TSM trading signal is"short",we should reduce the short position by ΔSR.In the low sentiment period,if the TSM trading signal is"long",we should reduce the long position by ΔSR;if the TSM trading signal is"short",we should increase the short position by ΔSR.The judgment of high and low sentiment periods is based on the lower and higher 30%percentiles.The empirical study uses the monthly data of the constituent stocks of the small and medium enterprise(SME)100 index.After excluding one stock with insufficient data,99 stocks are employed.The sample period ranges from January 2010 to July 2021,altogether 139 trading months.We form a composite sentiment index from seven market indices,i.e.,discount rate of closed-end funds,market trading volume,amount of IPOs,first day earning,number of newly opened accounts,consumer confidence index and market turnover rate,applying the principle component analysis method.Considering the fact that some indices take longer to reveal the same sentiment,we start by estimating the first principal component of the seven indices and their one-month lags.This gives us the first-stage composite sentiment index C1 4.We then compute the correlation between the first-stage index and the current and lagged values of each of the seven indices,and construct the composite sentiment index C7 from the seven market index variables with higher correlation with the first-stage index,controlling macro-economic effects.The first four principal components are selected so as to explain at least 85%of the variance.Time series plots confirm that the composite sentiment index has similar trend to that of the SME index and leads the SME index to some extent.Applying the VAR model for the composite sentiment index and the SME index reveals that the composite sentiment index has significantly positive impact on future SME index return,supporting our design of the STSM strategy.We plot cumulative excess returns for sixty-four common(J,K)combinations,that is,J=1,3,6,9,12,24,36,48 months,K=1,3,6,9,12,24,36,48 months,and chose the six(J,K)combinations with supe-rior performance,i.e.,(6,3),(6,6),(9,1),(9,3),(9,6)and(12,1),as benchmarks to construct our STSM strategies.Comparing the cumulative excess returns of the STSM strategies with those of the TSM strategies suggests that,the sentiment-based STSM strategies do have much better performance.The hypothesis test results further confirm that the performance gains of the STSM strategies are all significant,and the STSM strategies also have significantly higher return than the buy-and-hold strategy.As for the robustness test,we use different lengths of the investment horizon,the partial least squares method instead of the principal component analysis method for sentiment index synthetization,and the weighted average returns instead of the arithmetic average returns for generating trading signals,respectively,and all get consistent results.This study successfully constructs sentiment-based time series momentum strategies,which not only provides tools for investors'asset allocation,but also sheds lights on future quantitative studies.Current composite sentiment index is constructed from market indices,which indirectly reflects all market participants'sentiment.Recent researches suggest that using text data such as stock forum comments and analyst reports can construct indicators that directly reflect the subjective sentiments of different types of investors.Therefore,our future work will explore the application of richer investor sentiment indicators in time series momentum strategies.In addition,we will also explore the effective introduction of richer investor sentiment indicators in commonly used quantitative investment strategies such as cross-sectional momentum strategies and reversal strategies,in order to provide investors with more effective asset allocation tools.

investor sentimenttime series momentumprincipal component analysispartial least squares

瞿慧、王凯旋

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南京大学工程管理学院,江苏南京 210093

投资者情绪 时间序列动量 主成分分析 偏最小二乘

2024

运筹与管理
中国运筹学会

运筹与管理

CSTPCDCHSSCD北大核心
影响因子:0.688
ISSN:1007-3221
年,卷(期):2024.33(10)