JL

Jurek Leonhardt

Authored

5 records found

Contextual ranking models have delivered impressive performance improvements over classical models in the document ranking task. However, these highly over-parameterized models tend to be data-hungry and require large amounts of data even for fine tuning. This paper proposes a si ...
We propose a novel approach for learning node representations in directed graphs, which maintains separate views or embedding spaces for the two distinct node roles induced by the directionality of the edges. We argue that the previous approaches either fail to encode the edge di ...
The extraction of main content from web pages is an important task for numerous applications, ranging from usability aspects, like reader views for news articles in web browsers, to information retrieval or natural language processing. Existing approaches are lacking as they rely ...

Contributed

1 records found

Interpolation-based re-ranking emerged to make dense retrieval possible in low-latency applications such as web engine search. However, to this day there is no clear winner among the different ranking approaches. Moreover, missing document scores in hybrid retrieval have not been ...