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How Many Neighbours for Known-Item Search?

Publication at Faculty of Mathematics and Physics |
2021

Abstract

In the ongoing multimedia age, search needs become more variable and challenging to aid. In the area of content-based similarity search, asking search engines for one or just a few nearest neighbours to a query does not have to be sufficient to accomplish a challenging search task.

In this work, we investigate a task type where users search for one particular multimedia object in a large database. Complexity of the task is empirically demonstrated with a set of experiments and the need for a larger number of nearest neighbours is discussed.

A baseline approach for finding a larger number of approximate nearest neighbours is tested, showing potential speed-up with respect to a naive sequential scan. Last but not least, an open efficiency challenge for metric access methods is discussed for datasets used in the experiments.