Analysis of social network data often faces the problem of tie non-response. Recent studies show that the results of social network analyses can be severely biased if tie non-response was ignored. To overcome the problems created by tie non-response, several treatments were proposed in the literature: complete-case approach, unconditional mean imputation, reconstruction, and multiple imputation. In this paper we assessed the impact of tie non-response on social network analysis and investigated the performance of four treatments to handle tie non-response. The simulation results showed that ignoring tie non-response data in network analysis could underestimate the degree and centralization of social networks depending on the types of networ...
Most of existing network-based decision-support systems, such as recommender systems, require knowin...
Missing data on network ties is a fundamental problem for network analyses. The biases induced by mi...
In this thesis we developed, implemented, and evaluated multiple imputation algorithms for missing n...
Analysis of social network data is often hampered by non-response and missingdata. Recent studies sh...
Analysis of social network data is often hampered by non-response and missing data. Recent studies s...
An absent tie is one for which we have no information regarding its nature. Absent ties for a networ...
AbstractSocial network data usually contain different types of errors. One of them is missing data d...
This paper compares several imputation methods for missing data in network analysis on a diverse set...
The collection of longitudinal data on complete social networks often faces the problem of actor non...
The collection of longitudinal data on complete social networks often faces the problem of actor non...
Thesis (Ph.D.)--University of Washington, 2021This dissertation represents a series of studies focus...
are grateful to Martina Morris for numerous helpful suggestions. This research is supported by Grant...
Missing data on network ties is a fundamental problem for network analyses. The biases induced by mi...
abstract: Network analysis is a key conceptual orientation and analytical tool in the social science...
Research into missing network data is growing, with a focus on the impact of missing ties on network...
Most of existing network-based decision-support systems, such as recommender systems, require knowin...
Missing data on network ties is a fundamental problem for network analyses. The biases induced by mi...
In this thesis we developed, implemented, and evaluated multiple imputation algorithms for missing n...
Analysis of social network data is often hampered by non-response and missingdata. Recent studies sh...
Analysis of social network data is often hampered by non-response and missing data. Recent studies s...
An absent tie is one for which we have no information regarding its nature. Absent ties for a networ...
AbstractSocial network data usually contain different types of errors. One of them is missing data d...
This paper compares several imputation methods for missing data in network analysis on a diverse set...
The collection of longitudinal data on complete social networks often faces the problem of actor non...
The collection of longitudinal data on complete social networks often faces the problem of actor non...
Thesis (Ph.D.)--University of Washington, 2021This dissertation represents a series of studies focus...
are grateful to Martina Morris for numerous helpful suggestions. This research is supported by Grant...
Missing data on network ties is a fundamental problem for network analyses. The biases induced by mi...
abstract: Network analysis is a key conceptual orientation and analytical tool in the social science...
Research into missing network data is growing, with a focus on the impact of missing ties on network...
Most of existing network-based decision-support systems, such as recommender systems, require knowin...
Missing data on network ties is a fundamental problem for network analyses. The biases induced by mi...
In this thesis we developed, implemented, and evaluated multiple imputation algorithms for missing n...