(Applied) Statistics | Bayesian | Networks | R software | Data Science | Climate Change
Our paper was meant as a scientific evaluation of the evidence in highly parameterized models
Our paper was meant as a scientific evaluation of the evidence in highly parameterized models
Mostly in psychology we have (had) too little data for the large models we estimate (e.g., SEM, network).
Mostly in psychology we have (had) too little data for the large models we estimate (e.g., SEM, network).
Non-replication is conclusive evidence for an edge, it is in network A but not B. Inconclusive edges can’t establish replication (for me)
Non-replication is conclusive evidence for an edge, it is in network A but not B. Inconclusive edges can’t establish replication (for me)
also, happy to give you access to our documents to assess your guess
also, happy to give you access to our documents to assess your guess
1) robustness (in this paper): sufficient support from data that my findings hold.
2) non-replication: there is sufficient evidence in sample A and B, in A it is present and absent in B
1) robustness (in this paper): sufficient support from data that my findings hold.
2) non-replication: there is sufficient evidence in sample A and B, in A it is present and absent in B
...all the researchers providing access and input to their data
...the dedicated assistants and colleagues that helped with data collection and cleaning
...everyone providing helpful input and calming words during the extensive project 🙏🧡 /end
...all the researchers providing access and input to their data
...the dedicated assistants and colleagues that helped with data collection and cleaning
...everyone providing helpful input and calming words during the extensive project 🙏🧡 /end
Methodologist interested in methodology development? Use our resource of aggregated statistics for realistic simulation conditions (i.e., network density and expected edge weights).
Methodologist interested in methodology development? Use our resource of aggregated statistics for realistic simulation conditions (i.e., network density and expected edge weights).
...past network studies: Interpret their findings which caution and ideally aggregated them as a meta-network
...future network studies: Conduct a Bayesian analysis of your network, so you are at least aware of how (un)certain your results are. See how to doi.org/10.1177/2515...
...past network studies: Interpret their findings which caution and ideally aggregated them as a meta-network
...future network studies: Conduct a Bayesian analysis of your network, so you are at least aware of how (un)certain your results are. See how to doi.org/10.1177/2515...
Many network results are overstated of which some may be incorrect (not hold upon further data).
Many network results are overstated of which some may be incorrect (not hold upon further data).