<p>Financial stock market data, for various reasons, frequently contain missing values. One reason for this is that, because the markets close for holidays, daily stock prices are not always observed. This creates gaps in information, making it difficult to predict the following day’s stock prices. In this situation, information during the holiday can be “borrowed” from other countries’ stock market, since global stock prices tend to show similar movements and are in fact highly correlated. The main goal of this study is to combine stock index data from various markets around the world and develop an algorithm to impute the missing values in individual stock index using “information-sharing” between different time series. To develop imputat...
Educational production functions rely mostly on longitudinal data that almost always exhibit missing...
This paper compares methods to remedy missing value problems in survey data. The commonly used metho...
Often daily prices on different markets are not all observable. The question is whether we should ex...
Time series in many areas of application, and notably in the social sciences, are frequently incompl...
In a modern technology generation, big volumes of data are evolved under numerous operations compare...
Applications of modern methods for analyzing data with missing values, based primarily on multiple i...
Market risk is one of the most prevailing risks to which financial institutions are exposed. The mos...
Presentation 'Handling complex missing data problems in time series' at why R? Conference in Warsaw,...
The goal of this paper is to theoretically and empirically demonstrate the consequences of different...
Classical time series analysis methods are not readily applicable to the series with missing observa...
Multiple imputation (MI) is a commonly used approach to impute missing data. This thesis studies mis...
Time series with missing values occur in almost any domain of applied sciences. Ignoring missing val...
Poster 'Automatic selection of time series imputation algorithms' at DAGStat Conference 2019 in Muni...
Multiple imputation is a commonly used approach to deal with missing values. In this approach, an im...
Often daily prices on different markets are not all observable. The question is whether we should ex...
Educational production functions rely mostly on longitudinal data that almost always exhibit missing...
This paper compares methods to remedy missing value problems in survey data. The commonly used metho...
Often daily prices on different markets are not all observable. The question is whether we should ex...
Time series in many areas of application, and notably in the social sciences, are frequently incompl...
In a modern technology generation, big volumes of data are evolved under numerous operations compare...
Applications of modern methods for analyzing data with missing values, based primarily on multiple i...
Market risk is one of the most prevailing risks to which financial institutions are exposed. The mos...
Presentation 'Handling complex missing data problems in time series' at why R? Conference in Warsaw,...
The goal of this paper is to theoretically and empirically demonstrate the consequences of different...
Classical time series analysis methods are not readily applicable to the series with missing observa...
Multiple imputation (MI) is a commonly used approach to impute missing data. This thesis studies mis...
Time series with missing values occur in almost any domain of applied sciences. Ignoring missing val...
Poster 'Automatic selection of time series imputation algorithms' at DAGStat Conference 2019 in Muni...
Multiple imputation is a commonly used approach to deal with missing values. In this approach, an im...
Often daily prices on different markets are not all observable. The question is whether we should ex...
Educational production functions rely mostly on longitudinal data that almost always exhibit missing...
This paper compares methods to remedy missing value problems in survey data. The commonly used metho...
Often daily prices on different markets are not all observable. The question is whether we should ex...