May 11, Tuesday
12:00 – 13:30
A Nonlinear Approach to Dimension Reduction
Computer Science seminar
Lecturer : Adi Gottlieb
Affiliation : Weizmann Institute of Science
Location : 202/37
Host : Dr. Aryeh Kontorovich
The celebrated Johnson-Lindenstrauss lemma says that every n
points in Euclidean space can be represented with O(log n)
dimensions with only a minor distortion of pairwise distances.
It has been conjectured that a such-improved dimension reduction
representation is achievable for many interesting data sets, by
bounding the target dimension in terms of the intrinsic
dimensions of the data (for example, by replacing the log n term
with the doubling dimension). This question appears to be quite
challenging, requiring new (nonlinear) embedding techniques.
We make progress towards resolving this question by presenting
two dimension reduction theorems with similar flavor to the
conjecture. For some intended applications, these results can
serve as an alternative to the conjectured embedding.
[Joint work with Robert Krauthgamer.]