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The subject of the study is the intensity of targeted search queries as a leading indicator of bank deposits outflow. The goal is to propose a mechanism for accounting information about the dynamics of search queries, able to signal changes in the volumes of deposits of individuals. The study was conducted using time series analysis models. Statistical data of Rosstat, Bank of Russia, searches in Yandex wordstat, Google Trends for the period from February 2009 to May 2022 were used. The relationship between the intensity of targeted search queries and household decisions to withdraw money from deposits and bank accounts was revealed. An assessment of the short-term predictive ability of search queries on dynamics of deposits was carried out. The use of statistical indicators on the dynamics of targeted search queries as a leading indicator of the outflow of funds of the population from deposits in commercial banks is substantiated. It was revealed that the use of the intensity index of targeted search queries as a signal indicator of the outflow of the placed funds by the population increases the accuracy of forecasting on the horizon in 1 month by 0.15–0.25 p.p. to assess the dynamics of ruble deposits and by 0.20–0.35 p.p. to assess the dynamics of foreign currency deposits. The use of information from search queries for the management of commercial banks is especially useful in the event of a threat of a sharp outflow of deposits of the population. The obtained results indicate the prospects of using textual information, including targeted search queries in order to form leading indicators of deposits outflow of the population. Preventive identification of negative trends associated with the outflow of deposits of the population can ensure the credit institution’s stability against negative macroeconomic influences.
The subject of the study is the intensity of targeted search queries as a leading indicator of bank deposits outflow. The goal is to propose a mechanism for accounting information about the dynamics of search queries, able to signal changes in the volumes of deposits of individuals. The study was conducted using time series analysis models. Statistical data of Rosstat, Bank of Russia, searches in Yandex wordstat, Google Trends for the period from February 2009 to May 2022 were used. The relationship between the intensity of targeted search queries and household decisions to withdraw money from deposits and bank accounts was revealed. An assessment of the short-term predictive ability of search queries on dynamics of deposits was carried out. The use of statistical indicators on the dynamics of targeted search queries as a leading indicator of the outflow of funds of the population from deposits in commercial banks is substantiated. It was revealed that the use of the intensity index of targeted search queries as a signal indicator of the outflow of the placed funds by the population increases the accuracy of forecasting on the horizon in 1 month by 0.15–0.25 p.p. to assess the dynamics of ruble deposits and by 0.20–0.35 p.p. to assess the dynamics of foreign currency deposits. The use of information from search queries for the management of commercial banks is especially useful in the event of a threat of a sharp outflow of deposits of the population. The obtained results indicate the prospects of using textual information, including targeted search queries in order to form leading indicators of deposits outflow of the population. Preventive identification of negative trends associated with the outflow of deposits of the population can ensure the credit institution’s stability against negative macroeconomic influences.
In this paper the following models are compared: restricted and unrestricted MIDAS-models (mixed data sampling models), MFBVAR-model (mixed frequency Bayesian vector autoregression), Linear model with regularization (MIDAS_L1-, MIDAS_L2and MIDAS_PC-model) and dynamic factor model. The results are compared with classical autoregression as a benchmark. Production indices for different industries and indicators characterizing Russian GDP and its components, energy prices and PMI of Russia and its main trading partners, as well as indicators derived from the analysis of sentiment of news articles published by a number of major media and blogs are used as explanatory variables. The paper also proposes a method of rapid assessment of the current state of the economy based on data for the first or first two months of the quarter in question only. The use of this approach in combination with news sentiment analysis allows to draw conclusions about current economic situation extremely rapidly. Models’ accuracy is assessed by cross-validation for periods before and after the Q2 2022, the significance of the effect of adding news variables is assessed using the Diebold—Mariano test. When testing during the crisis period (starting from the Q1 2022), the addition of news variables leads to an increase in accuracy for 45% of the models considered, and the average improvement (reduction in the average absolute error) was 1.39 points (the reduction in MAE for the science-based GDP growth rates of Russia is 0.64 p.p.). At the same time, in a calmer (pre-sanction) period, the advantage of news is less noticeable: an increase in accuracy was recorded in 30% of cases with an average decrease in error of 1.54 points (the decrease in MAE for Russia’s GDP growth rate is 0.26 p.p.), and the change accuracy of science data when adding variables reflecting the news background turns out to be statistically insignificant. Thus, the use of news sentiment is not a “silver bullet” in the task of nowcasting Russian GDP, but in times of crisis it can serve as a good and, importantly, very operative indicator of the state of the economy and can be used in conjunction with more traditional explanatory variables.
The study aims to identify the impact of digitalization on predictability in the BRICS countries’ stock markets. It is based on an analysis of the dynamics of stock markets volatility during the 1990-2023 period. The paper seeks to prove that the standard deviation of stock returns is determined by the volume of incoming new information, and higher volatility of returns indicates lower predictability. Digitalization may cause a reduction in uncertainty as it uses more data, improves their quality and develops data analysis methods. On the other hand, digitalization may lead to increased uncertainty due to the emergence and development of new industries, in which it is more difficult to predict cash flows in comparison with traditional industries because of increased complexity of supply chains and technologies. Based on quantitative analysis, it has been revealed that digitalization has led to a statistically significant decrease in the volatility of stock markets in the BRICS countries. In 2015-2023, relative to the period of the 1990s-2006, volatility in Russia decreased by 1 percentage point, in India by 0.4–0.5 percentage points, in China by 0.8 percentage points, in the UAE (Dubai) by 0.5-0.7 percentage points. Statistically insignificant decreases in volatility were observed in Brazil and South Africa. In the developed capital markets, the decrease in volatility between these two periods was also statistically insignificant, amounting to less than 0.1 percentage points. These findings may indicate that the processes of digitalization in the BRICS countries contributed to an accelerated increase in predictability thanks to an increase in the volume and quality of information and the emergence of new methods of analysis. At the same time, part of the decrease in volatility may be explained by further development and improved efficiency of capital markets. The joint influence of these effects on the complexity of forecasting turned out to be more significant than the impact of innovative technologies and new industries.
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