In the big data context, it is very frequent to manage the analysis of missing values. This is especially relevant in the field of statistical analysis, where this represents a thorny issue. This study proposes a strategy for data enrichment in presence of sparse matrices. The research objective consists in the evaluation of a possible distinction of behaviour among observations in sparse matrices with missing data. After selecting among the multiple imputation methods, an innovative technique will be presented to impute missing observations as a negative position or a neutral opinion. This method has been applied to a dataset measuring the interaction between users and social network pages for some Italian newspapers.

Mariani, P., Marletta, A., Locci, M. (2021). The use of multiple imputation techniques in social media data. Intervento presentato a: Cladag 2021, 13th Scientific Meeting Classification and Data Analysis Group, Firenze.

The use of multiple imputation techniques in social media data

Mariani, P;Marletta, A
;
2021

Abstract

In the big data context, it is very frequent to manage the analysis of missing values. This is especially relevant in the field of statistical analysis, where this represents a thorny issue. This study proposes a strategy for data enrichment in presence of sparse matrices. The research objective consists in the evaluation of a possible distinction of behaviour among observations in sparse matrices with missing data. After selecting among the multiple imputation methods, an innovative technique will be presented to impute missing observations as a negative position or a neutral opinion. This method has been applied to a dataset measuring the interaction between users and social network pages for some Italian newspapers.
abstract + slide
Social network data, Missing values, Multiple imputations
English
Cladag 2021, 13th Scientific Meeting Classification and Data Analysis Group
2021
2021
open
Mariani, P., Marletta, A., Locci, M. (2021). The use of multiple imputation techniques in social media data. Intervento presentato a: Cladag 2021, 13th Scientific Meeting Classification and Data Analysis Group, Firenze.
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10281/327003
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