Congratulations to this year’s students!
We have had an excellent year at .txtLAB. I want to send out a special thanks to all of the students who have been contributing to the lab. You’ve made it a great place to work. Here is a list of projects that we’ve been working on this year:
- studying the ambiguity surrounding social interactions in novels
- understanding the semantic differences between prizewinning and bestselling fiction
- developing machine learning techniques to detect practices of scientific illustration in historical documents, beginning with footnotes
- measuring the concentration of elite institutions in high-prestige publications in the humanities
- tracking explicit mentions of time in novels
- creating techniques for detecting narrative frames and plotlines
- understanding the predictability of fictional writing over the past two centuries
- studying gender bias in book reviews
- exploring the quality and quantity of speaking parts in movies by race and gender
- observing the spatial settings of films and TV shows to understand how these media differentiate themselves along a spatial-imaginary
- measuring distributions of character gender across 1,200 contemporary works of fiction from six different genres