Predicting financial market movements in today’s fast-paced and complex environment is challenging more than ever. For many investors, online resources are a major source of information. Researchers can use Google Trends to access the number of search queries of a particular topic by internet users. The search volume index provided by Google then can be used as a proxy for importance of that topic. To predict the collective response to a particular news, we can use the search index for relevant search terms in our forecasting model. The focus of our study is forecasting food stock movement. A unique feature of the food industry is that besides common fundamental information, stakeholders are responsive to food safety news. In this study, we...
This paper explores the use of Google trending data as a indicator for market sentiment. The Google ...
Predicting future food prices is important not only for projecting and adjusting the cost of governm...
This paper examines the predictive power of Google trends on the grain's futures price movement. The...
We investigate whether day-ahead forecasts of individual stocks' volatility can be improved with Int...
Commodity prices are volatile. Forecasting the volatility has been notoriously difficult. We propose...
We investigate whether search statistics from Google can be used to forecast stock returns over diff...
Google’s search volume data has many attributes that could make it a powerful tool for studying soci...
First, this research paper tries to study the correlational relationship between search volume queri...
This paper analyzes whether web search queries predict stock market activity in a sample of the lar...
Master's thesis in FinanceWe investigate whether Google search volume index (SVI) can explain and pr...
This project looks to generate forecasting models that can help investors better quantify the risk a...
We propose the use of Google online search data for nowcasting and forecasting the number of food st...
Study of the forecasting models using large scale microblog discussions and the search behavior data...
[[abstract]]Historical trading data, which are inevitably associated with the framework of causality...
Crises in financial markets affect humans worldwide. Detailed market data on trading decisions refle...
This paper explores the use of Google trending data as a indicator for market sentiment. The Google ...
Predicting future food prices is important not only for projecting and adjusting the cost of governm...
This paper examines the predictive power of Google trends on the grain's futures price movement. The...
We investigate whether day-ahead forecasts of individual stocks' volatility can be improved with Int...
Commodity prices are volatile. Forecasting the volatility has been notoriously difficult. We propose...
We investigate whether search statistics from Google can be used to forecast stock returns over diff...
Google’s search volume data has many attributes that could make it a powerful tool for studying soci...
First, this research paper tries to study the correlational relationship between search volume queri...
This paper analyzes whether web search queries predict stock market activity in a sample of the lar...
Master's thesis in FinanceWe investigate whether Google search volume index (SVI) can explain and pr...
This project looks to generate forecasting models that can help investors better quantify the risk a...
We propose the use of Google online search data for nowcasting and forecasting the number of food st...
Study of the forecasting models using large scale microblog discussions and the search behavior data...
[[abstract]]Historical trading data, which are inevitably associated with the framework of causality...
Crises in financial markets affect humans worldwide. Detailed market data on trading decisions refle...
This paper explores the use of Google trending data as a indicator for market sentiment. The Google ...
Predicting future food prices is important not only for projecting and adjusting the cost of governm...
This paper examines the predictive power of Google trends on the grain's futures price movement. The...