This is so informative and great, thank you for your research, madam!
@giantbee97632 жыл бұрын
What is really damaging to the community by papers which are not scientifically honest is that people get excited and carry on over their work, thinking that the direction shows promise, and spend hours (days-weeks-months) of their time trying to replication/implement the paper only to get sub par results, even worse, write their own papers on top of that and lose the track of ideas completely due to not being able to attribute the successes or failures to anything in particular. Like you put precisely, other factors must be kept constant in order for a fair comparison to show what exactly the paper's proposed mechanisms managed to contribute... Thanks for doing these videos and the investigations :D Saves a lot of time for me! (And probably others as well...)
@DerPylz3 жыл бұрын
This rant really speaks from my heart! Thanks for the great video!
@minos993 жыл бұрын
I enjoyed the coverage. The key indeed is the Data.
@hannesstark50243 жыл бұрын
Okay, I feel somewhat misled by that paper
@Tuasmanque3 жыл бұрын
This feels like what peer review should be, great series!
@bryanbischof43513 жыл бұрын
I love this series of videos: “good results bad paper”. ;-)
@AICoffeeBreak3 жыл бұрын
Haha, I honestly do not like making such a series of videos. But I end up doing them anyway: I start reading the papers with great enthusiasm, but end up extremely (negatively) surprised by them. Honestly, I love the SimVLM paper and its contribution. But this also makes me judge it harsher. 😅