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An Empirical Analysis of the Efficient Market Hypothesis in China's Stock Market
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作者 Jiaxuan Xu 《Proceedings of Business and Economic Studies》 2021年第3期1-5,共5页
The efficient market hypothesis is one of the most important theories in finance.According to this hypothesis,in a stock market with sound laws,good functions,high transparencies,and extensive competitions,all valuabl... The efficient market hypothesis is one of the most important theories in finance.According to this hypothesis,in a stock market with sound laws,good functions,high transparencies,and extensive competitions,all valuable information is timely,accurately,and fully reflected in the trend of stock prices including the current and future values of enterprises.Unless there are market manipulations,it would be impossible for investors to gain more above the average profits in the market by analyzing former prices.Since the efficient market hypothesis has been introduced,it has become an interest in the empirical research of the security market.It is one of the most controversial investment theories and there are many evidences supporting and also opposing this hypothesis.Nevertheless,this hypothesis still holds an important status in the basic framework of mainstream theories in modem financial markets.By analyzing simulated investment transactions in regard to stock trading of three different enterprises,this paper verified that the efficient market hypothesis is partially valid. 展开更多
关键词 Efficient market hypothesis market information china's stock market
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Empirical Test of "Barometer Function" of China's Stock Market
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作者 孙开连 王凯涛 从臻 《成组技术与生产现代化》 2002年第1期40-43,60,共5页
Through the empirical test of the economic and stock market price index from 1994-2001.6, this article finds that the price tendency of the stock market in China could reflect the economic status and the future trend,... Through the empirical test of the economic and stock market price index from 1994-2001.6, this article finds that the price tendency of the stock market in China could reflect the economic status and the future trend, thus has the function of barometer, additionally through the normal analysis of the continuing falling of the stock price since July 2001, so, the paper comes to the conclusion that the falling price is the reflection of the weak macro economy and the accelerating recession of the industries, and therefore is a warning of the possible worsened economic tendency. Suggestions are to adjust the macro fiscal and financial policy to prevent the economy from recessing. By the way the article conducts some of the primary analyses of punishments against market defiance and reducing state owned shares, thus to clarify some of the unclear concepts and prevent the misleading of economic adjust ment. 展开更多
关键词 中国 证券市场 经济晴雨表 宏观经济 股票价格指数
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The Impact of Short Selling Disclosure Regulatory Constraint on the Lending Market and Stock Ownership
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作者 Geoffrey Ducournau Jinliang Li +2 位作者 Yan Li Zigan Wang Qie Ellie Yin 《Journal of Modern Accounting and Auditing》 2024年第3期99-114,共16页
We examine the impact of the short sell disclosure(SSD)regime on the stock lending market and investor behaviors,employing a staggered difference-indifference(DiD)methodology.Our research reveals that the introduction... We examine the impact of the short sell disclosure(SSD)regime on the stock lending market and investor behaviors,employing a staggered difference-indifference(DiD)methodology.Our research reveals that the introduction of the disclosure regime enhances market transparency,resulting in a diminished appeal of stock ownership in the lending market for active investors.This shift is accompanied by a reduction in information leakage risks and longer loan durations.Specifically,our analysis reveals a significant decrease in the risk of loan recall by 4.87%,accompanied by an average increase of 23.72%in loan duration for short selling activities.Furthermore,the cost associated with short-sell disclosure causes a decline in both lending supply and short demand. 展开更多
关键词 short sell disclosure stock equity lending market stock ownership
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Research on the Dynamic Volatility Relationship between Chinese and U.S. Stock Markets Based on the DCC-GARCH Model under the Background of the COVID-19 Pandemic
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作者 Simin Wu Yan Liang Weixun Li 《Journal of Applied Mathematics and Physics》 2024年第9期3066-3080,共15页
This study utilizes the Dynamic Conditional Correlation-Generalized Autoregressive Conditional Heteroskedasticity (DCC-GARCH) model to investigate the dynamic relationship between Chinese and U.S. stock markets amid t... This study utilizes the Dynamic Conditional Correlation-Generalized Autoregressive Conditional Heteroskedasticity (DCC-GARCH) model to investigate the dynamic relationship between Chinese and U.S. stock markets amid the COVID-19 pandemic. Initially, a univariate GARCH model is developed to derive residual sequences, which are then used to estimate the DCC model parameters. The research reveals a significant rise in the interconnection between the Chinese and U.S. stock markets during the pandemic. The S&P 500 index displayed higher sensitivity and greater volatility in response to the pandemic, whereas the CSI 300 index showed superior resilience and stability. Analysis and model estimation suggest that the market’s dependence on historical data has intensified and its sensitivity to recent shocks has heightened. Predictions from the model indicate increased market volatility during the pandemic. While the model is proficient in capturing market trends, there remains potential for enhancing the accuracy of specific volatility predictions. The study proposes recommendations for policymakers and investors, highlighting the importance of improved cooperation in international financial market regulation and investor education. 展开更多
关键词 DCC-GARCH Model stock market Linkage COVID-19 market Volatility Forecasting Analysis
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China’s Monetary Policy Impacts on Money and Stock Markets
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作者 Fang Fang 《Proceedings of Business and Economic Studies》 2024年第2期46-52,共7页
This study investigated the impact of China’s monetary policy on both the money market and stock markets,assuming that non-policy variables would not respond contemporaneously to changes in policy variables.Monetary ... This study investigated the impact of China’s monetary policy on both the money market and stock markets,assuming that non-policy variables would not respond contemporaneously to changes in policy variables.Monetary policy adjustments are swiftly observed in money markets and gradually extend to the stock market.The study examined the effects of monetary policy shocks using three primary instruments:interest rate policy,reserve requirement ratio,and open market operations.Monthly data from 2007 to 2013 were analyzed using vector error correction(VEC)models.The findings suggest a likely presence of long-lasting and stable relationships among monetary policy,the money market,and stock markets.This research holds practical implications for Chinese policymakers,particularly in managing the challenges associated with fluctuation risks linked to high foreign exchange reserves,aiming to achieve autonomy in monetary policy and formulate effective monetary strategies to stimulate economic growth. 展开更多
关键词 Chinese money market Chinese stocks market Monetary policy Shanghai Interbank Offered Rate(SHIBOR) Vector error correction models
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Survey of feature selection and extraction techniques for stock market prediction 被引量:2
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作者 Htet Htet Htun Michael Biehl Nicolai Petkov 《Financial Innovation》 2023年第1期667-691,共25页
In stock market forecasting,the identification of critical features that affect the performance of machine learning(ML)models is crucial to achieve accurate stock price predictions.Several review papers in the literat... In stock market forecasting,the identification of critical features that affect the performance of machine learning(ML)models is crucial to achieve accurate stock price predictions.Several review papers in the literature have focused on various ML,statistical,and deep learning-based methods used in stock market forecasting.However,no survey study has explored feature selection and extraction techniques for stock market forecasting.This survey presents a detailed analysis of 32 research works that use a combination of feature study and ML approaches in various stock market applications.We conduct a systematic search for articles in the Scopus and Web of Science databases for the years 2011–2022.We review a variety of feature selection and feature extraction approaches that have been successfully applied in the stock market analyses presented in the articles.We also describe the combination of feature analysis techniques and ML methods and evaluate their performance.Moreover,we present other survey articles,stock market input and output data,and analyses based on various factors.We find that correlation criteria,random forest,principal component analysis,and autoencoder are the most widely used feature selection and extraction techniques with the best prediction accuracy for various stock market applications. 展开更多
关键词 Feature selection Feature extraction Dimensionality reduction stock market forecasting Machine learning
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Stock market prediction using deep learning algorithms 被引量:1
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作者 Somenath Mukherjee Bikash Sadhukhan +2 位作者 Nairita Sarkar Debajyoti Roy Soumil De 《CAAI Transactions on Intelligence Technology》 SCIE EI 2023年第1期82-94,共13页
The Stock Market is one of the most active research areas,and predicting its nature is an epic necessity nowadays.Predicting the Stock Market is quite challenging,and it requires intensive study of the pattern of data... The Stock Market is one of the most active research areas,and predicting its nature is an epic necessity nowadays.Predicting the Stock Market is quite challenging,and it requires intensive study of the pattern of data.Specific statistical models and artificially intelligent algorithms are needed to meet this challenge and arrive at an appropriate solution.Various machine learning and deep learning algorithms can make a firm prediction with minimised error possibilities.The Artificial Neural Network(ANN)or Deep Feedforward Neural Network and the Convolutional Neural Network(CNN)are the two network models that have been used extensively to predict the stock market prices.The models have been used to predict upcoming days'data values from the last few days'data values.This process keeps on repeating recursively as long as the dataset is valid.An endeavour has been taken to optimise this prediction using deep learning,and it has given substantial results.The ANN model achieved an accuracy of 97.66%,whereas the CNN model achieved an accuracy of 98.92%.The CNN model used 2-D histograms generated out of the quantised dataset within a particular time frame,and prediction is made on that data.This approach has not been implemented earlier for the analysis of such datasets.As a case study,the model has been tested on the recent COVID-19 pandemic,which caused a sudden downfall of the stock market.The results obtained from this study was decent enough as it produced an accuracy of 91%. 展开更多
关键词 artificial neural network convolutional neural network nifty stock market
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The effect of overseas investors on local market efficiency:evidence from the Shanghai/Shenzhen–Hong Kong Stock Connect
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作者 Yan Meng Lingyun Xiong +1 位作者 Lijuan Xiao Min Bai 《Financial Innovation》 2023年第1期1103-1134,共32页
Using a recent stock market liberalization reform policy in China—the Stock Connect—as a quasi-natural experiment,this study examines the effect of stock market liberalization on market efficiency.Employing a datase... Using a recent stock market liberalization reform policy in China—the Stock Connect—as a quasi-natural experiment,this study examines the effect of stock market liberalization on market efficiency.Employing a dataset of 17,086 Chinese listed firms covering 2009 to 2018,we find that stock market liberalization improves the market efficiency of the Chinese mainland stock market.We further explore the potential channels through which the Stock Connect can enhance the efficiency of the A-share(A-shares refer to shares issued by Chinese companies incorporated in China's Mainland,traded in the Shanghai Stock Exchange and the Shenzhen Stock Exchange.They are denominated in Chinese RMB(the local currency).A-shares were restricted to local Chinese investors before 2003,are open to foreign investors via the Qualified Foreign Institutional Investor,RMB Qualified Foreign Institutional Investor,or the Stock Connect programs.)market.The findings show that liberalizing capital markets could benefit local market efficiency by increasing stock price informational efficiency and improving corporate governance quality.The additional analysis shows that stock market liberalization has a significant and positive impact on local market efficiency,enhancing firm value and reducing stock crash risk.We conduct various robustness checks to corroborate our findings.This study provides important policy implications for emerging countries liberalizing capital markets for foreign investors. 展开更多
关键词 market efficiency stock Connect market liberalization Overseas investors
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Stock Market Prediction Using Generative Adversarial Networks(GANs):Hybrid Intelligent Model
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作者 Fares Abdulhafidh Dael Omer CagrıYavuz Ugur Yavuz 《Computer Systems Science & Engineering》 SCIE EI 2023年第10期19-35,共17页
The key indication of a nation’s economic development and strength is the stock market.Inflation and economic expansion affect the volatility of the stock market.Given the multitude of factors,predicting stock prices... The key indication of a nation’s economic development and strength is the stock market.Inflation and economic expansion affect the volatility of the stock market.Given the multitude of factors,predicting stock prices is intrinsically challenging.Predicting the movement of stock price indexes is a difficult component of predicting financial time series.Accurately predicting the price movement of stocks can result in financial advantages for investors.Due to the complexity of stock market data,it is extremely challenging to create accurate forecasting models.Using machine learning and other algorithms to anticipate stock prices is an interesting area.The purpose of this article is to forecast stock market values to assist investors to make better informed and precise investing decisions.Statistics,Machine Learning(ML),Natural language processing(NLP),and sentiment analysis will be used to accomplish the study’s objectives.Using both qualitative and quantitative information,the study developed a hybrid model.The hybrid model has been handled with GANs.Based on the model’s predictions,a buy-or-sell trading strategy is offered.The conclusions of this study will assist investors in selecting the ideal choice while selling,holding,or buying shares. 展开更多
关键词 stock markets STATISTICS machine learning sentiment analysis investment decisions
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Stock Market Index Prediction Using Machine Learning and Deep Learning Techniques
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作者 Abdus Saboor Arif Hussain +3 位作者 Bless Lord Y。Agbley Amin ul Haq Jian Ping Li Rajesh Kumar 《Intelligent Automation & Soft Computing》 SCIE 2023年第8期1325-1344,共20页
Stock market forecasting has drawn interest from both economists and computer scientists as a classic yet difficult topic.With the objective of constructing an effective prediction model,both linear and machine learni... Stock market forecasting has drawn interest from both economists and computer scientists as a classic yet difficult topic.With the objective of constructing an effective prediction model,both linear and machine learning tools have been investigated for the past couple of decades.In recent years,recurrent neural networks(RNNs)have been observed to perform well on tasks involving sequence-based data in many research domains.With this motivation,we investigated the performance of long-short term memory(LSTM)and gated recurrent units(GRU)and their combination with the attention mechanism;LSTM+Attention,GRU+Attention,and LSTM+GRU+Attention.The methods were evaluated with stock data from three different stock indices:the KSE 100 index,the DSE 30 index,and the BSE Sensex.The results were compared to other machine learning models such as support vector regression,random forest,and k-nearest neighbor.The best results for the three datasets were obtained by the RNN-based models combined with the attention mechanism.The performances of the RNN and attention-based models are higher and would be more effective for applications in the business industry. 展开更多
关键词 Machine learning deep learning stock market PREDICTION data analysis
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A Survey on Stock Market Manipulation Detectors Using Artificial Intelligence
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作者 Mohd Asyraf Zulkifley Ali Fayyaz Munir +1 位作者 Mohd Edil Abd Sukor Muhammad Hakimi Mohd Shafiai 《Computers, Materials & Continua》 SCIE EI 2023年第5期4395-4418,共24页
A well-managed financial market of stocks,commodities,derivatives,and bonds is crucial to a country’s economic growth.It provides confidence to investors,which encourages the inflow of cash to ensure good market liqu... A well-managed financial market of stocks,commodities,derivatives,and bonds is crucial to a country’s economic growth.It provides confidence to investors,which encourages the inflow of cash to ensure good market liquidity.However,there will always be a group of traders that aims to manipulate market pricing to negatively influence stock values in their favor.These illegal trading activities are surely prohibited according to the rules and regulations of every country’s stockmarket.It is the role of regulators to detect and prevent any manipulation cases in order to provide a trading platform that is fair and efficient.However,the complexity of manipulation cases has increased significantly,coupled with high trading volumes,which makes the manual observations of such cases by human operators no longer feasible.As a result,many intelligent systems have been developed by researchers all over the world to automatically detect various types of manipulation cases.Therefore,this review paper aims to comprehensively discuss the state-of-theart methods that have been developed to detect and recognize stock market manipulation cases.It also provides a concise definition of manipulation taxonomy,including manipulation types and categories,as well as some of the output of early experimental research.In summary,this paper provides a thorough review of the automated methods for detecting stock market manipulation cases. 展开更多
关键词 Artificial intelligence machine learning convolutional neural network recurrent neural network stock market manipulation
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China's Stock Market:Inefficiencies and Institutional Implications 被引量:1
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作者 Guoping Li 《China & World Economy》 SCIE 2008年第6期81-96,共16页
The dramatic movements of China's stock market in the past two and a half years have renewed debate among academics over the efficiency of China's stock market. The present paper tests the efficiency of China' s st... The dramatic movements of China's stock market in the past two and a half years have renewed debate among academics over the efficiency of China's stock market. The present paper tests the efficiency of China' s stock market. The realization of efficient markets requires the effective operation of a complete set of macro and micro mechanisms. However, such mechanisms are not only incomplete in China' s stock market, but are also ineffective because of the prevalence of institutional deficiencies. 展开更多
关键词 China's stock market efficient market short sale
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A Critical Review of the Effects of Stock Returns and Market Timing on Capital Structure
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作者 YE Hongru JI Jie ZOU Yuanyuan 《Management Studies》 2023年第6期312-321,共10页
Capital structure is regarded as the combination of debt and equity firms used to finance operations and investments.The choice of capital structure significantly impacts a company’s cost of capital,profitability,and... Capital structure is regarded as the combination of debt and equity firms used to finance operations and investments.The choice of capital structure significantly impacts a company’s cost of capital,profitability,and risk profile.Among a series of factors that affect capital structure,this paper focuses on stock returns and market timing.In this review,an array of papers is analyzed to summarize what current research claims regarding the influence of stock returns and market timing on capital structure.This paper centers on the stock return and market timing theories and also discusses other theories like the trade-off theory,the pecking order theory,and the signaling theory. 展开更多
关键词 capital structure stock returns market timing
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Transparency of China's Stock Market
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作者 Xie Ping, Director, Research Bureau, People’s Bank of China. E-mail: pingx@public.bta.net.cn. 《China & World Economy》 SCIE 2003年第3期47-50,共4页
Ⅰ. Transparency and Truthfulness: Theoretical BackgroundAccording to information restriction theory devel-oped by Stiglitz, the 2001 Nobel Prize winner ofeconomics, transparency can raise market efficiencyand reduce ... Ⅰ. Transparency and Truthfulness: Theoretical BackgroundAccording to information restriction theory devel-oped by Stiglitz, the 2001 Nobel Prize winner ofeconomics, transparency can raise market efficiencyand reduce trading cost.The past economics theory 展开更多
关键词 of for on AS that IS Transparency of China’s stock market
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China's Insurance Fund Enters the Stock Market
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《China's Foreign Trade》 2001年第3期34-35,共2页
关键词 In China’s Insurance Fund Enters the stock market
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Deep Learning-Based Stock Price Prediction Using LSTM Model
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作者 Jiayi Mao Zhiyong Wang 《Proceedings of Business and Economic Studies》 2024年第5期176-185,共10页
The stock market is a vital component of the broader financial system,with its dynamics closely linked to economic growth.The challenges associated with analyzing and forecasting stock prices have persisted since the ... The stock market is a vital component of the broader financial system,with its dynamics closely linked to economic growth.The challenges associated with analyzing and forecasting stock prices have persisted since the inception of financial markets.By examining historical transaction data,latent opportunities for profit can be uncovered,providing valuable insights for both institutional and individual investors to make more informed decisions.This study focuses on analyzing historical transaction data from four banks to predict closing price trends.Various models,including decision trees,random forests,and Long Short-Term Memory(LSTM)networks,are employed to forecast stock price movements.Historical stock transaction data serves as the input for training these models,which are then used to predict upward or downward stock price trends.The study’s empirical results indicate that these methods are effective to a degree in predicting stock price movements.The LSTM-based deep neural network model,in particular,demonstrates a commendable level of predictive accuracy.This conclusion is reached following a thorough evaluation of model performance,highlighting the potential of LSTM models in stock market forecasting.The findings offer significant implications for advancing financial forecasting approaches,thereby improving the decision-making capabilities of investors and financial institutions. 展开更多
关键词 Autoregressive integrated moving average(ARIMA)model Long Short-Term Memory(LSTM)network Forecasting stock market
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ST-Trader:A Spatial-Temporal Deep Neural Network for Modeling Stock Market Movement 被引量:6
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作者 Xiurui Hou Kai Wang +1 位作者 Cheng Zhong Zhi Wei 《IEEE/CAA Journal of Automatica Sinica》 SCIE EI CSCD 2021年第5期1015-1024,共10页
Stocks that are fundamentally connected with each other tend to move together.Considering such common trends is believed to benefit stock movement forecasting tasks.However,such signals are not trivial to model becaus... Stocks that are fundamentally connected with each other tend to move together.Considering such common trends is believed to benefit stock movement forecasting tasks.However,such signals are not trivial to model because the connections among stocks are not physically presented and need to be estimated from volatile data.Motivated by this observation,we propose a framework that incorporates the inter-connection of firms to forecast stock prices.To effectively utilize a large set of fundamental features,we further design a novel pipeline.First,we use variational autoencoder(VAE)to reduce the dimension of stock fundamental information and then cluster stocks into a graph structure(fundamentally clustering).Second,a hybrid model of graph convolutional network and long-short term memory network(GCN-LSTM)with an adjacency graph matrix(learnt from VAE)is proposed for graph-structured stock market forecasting.Experiments on minute-level U.S.stock market data demonstrate that our model effectively captures both spatial and temporal signals and achieves superior improvement over baseline methods.The proposed model is promising for other applications in which there is a possible but hidden spatial dependency to improve time-series prediction. 展开更多
关键词 Graph convolution network long-short term memory network stock market forecasting variational autoencoder(VAE)
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Interdependence between the stock market and the bond market in one country:evidence from the subprime crisis and the European debt crisis 被引量:4
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作者 Ke Cheng Xiaoguang Yang 《Financial Innovation》 2017年第1期58-79,共22页
Background:Once a global financial crisis breaks out,the interdependence between different financial markets suddenly increases and leads to a significant contagion.Methods:With 39 countries used as samples,this paper... Background:Once a global financial crisis breaks out,the interdependence between different financial markets suddenly increases and leads to a significant contagion.Methods:With 39 countries used as samples,this paper analyzes the interdependence between the stock market and the government bond market during the crisis periods.Results:It proves that the investor focuses more on the safety of their portfolio so there is neither a flight from quality nor a positive spillover during a crisis period.When one market is safer than the other market in the same country,a flight to quality occurs between the two markets;however,when the two markets in one country are both risky,negative spillover appears between these two markets.Conclusions:This means a flight to quality from the stock market to the short-term government bond will occur more frequently than will occur from the stock market to the long-term government bond markets.In addition,a flight to quality always emerges in developed markets,while negative spillovers take place in emerging markets and in the PIIGS countries(Portugal,Italy,Ireland,Greece,and Spain,referred to hereon as“PIIGS”)in the European Debt Crisis. 展开更多
关键词 market suddenly stock
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Can the Baidu Index predict realized volatility in the Chinese stock market? 被引量:5
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作者 Wei Zhang Kai Yan Dehua Shen 《Financial Innovation》 2021年第1期154-184,共31页
This paper incorporates the Baidu Index into various heterogeneous autoregressive type time series models and shows that the Baidu Index is a superior predictor of realized volatility in the SSE 50 Index.Furthermore,t... This paper incorporates the Baidu Index into various heterogeneous autoregressive type time series models and shows that the Baidu Index is a superior predictor of realized volatility in the SSE 50 Index.Furthermore,the predictability of the Baidu Index is found to rise as the forecasting horizon increases.We also find that continuous components enhance predictive power across all horizons,but that increases are only sustained in the short and medium terms,as the long-term impact on volatility is less persistent.Our findings should be expected to influence investors interested in constructing trading strategies based on realized volatility. 展开更多
关键词 Realized volatility HAR model Baidu Index Chinese stock market
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Predicting Stock Prices Using Polynomial Classifiers: The Case of Dubai Financial Market 被引量:4
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作者 Khaled Assaleh Hazim El-Baz Saeed Al-Salkhadi 《Journal of Intelligent Learning Systems and Applications》 2011年第2期82-89,共8页
Predicting stock price movements is a challenging task for academicians and practitioners. In particular, forecasting price movements in emerging markets seems to be more elusive because they are usually more volatile... Predicting stock price movements is a challenging task for academicians and practitioners. In particular, forecasting price movements in emerging markets seems to be more elusive because they are usually more volatile often accompa-nied by thin trading-volumes and they are susceptible to more manipulation compared to mature markets. Technical analysis of stocks and commodities has become a science on its own;quantitative methods and techniques have been applied by many practitioners to forecast price movements. Lagging and sometimes leading technical indicators pro-vide rich quantitative tools for traders and investors in their attempt to gain advantage when making investment or trading decisions. Artificial Neural Networks (ANN) have been used widely in predicting stock prices because of their capability in capturing the non-linearity that often exists in price movements. Recently, Polynomial Classifiers (PC) have been applied to various recognition and classification application and showed favorable results in terms of recog-nition rates and computational complexity as compared to ANN. In this paper, we present two prediction models for predicting securities’ prices. The first model was developed using back propagation feed forward neural networks. The second model was developed using polynomial classifiers (PC), as a first time application for PC to be used in stock prices prediction. The inputs to both models were identical, and both models were trained and tested on the same data. The study was conducted on Dubai Financial Market as an emerging market and applied to two of the market’s leading stocks. In general, both models achieved very good results in terms of mean absolute error percentage. Both models show an average error around 1.5% predicting the next day price, an average error of 2.5% when predicting second day price, and an average error of 4% when predicted the third day price. 展开更多
关键词 DUBAI FINANCIAL market POLYNOMIAL CLASSIFIERS stock market Neural Networks
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