A Spatio-Temporal Access Method based on Snapshots and Events
Gilberto Gutiérrez, Gonzalo Navarro, Andrea Rodríguez,
Alejandro González, and José Orellana.
We address the problem of adaptive compression of natural
language text, focusing on the case where low bandwidth is
available and the receiver has little processing power, as in
mobile applications. Our technique achieves compression ratios
around 32% and requires very little effort from the receiver. This
tradeoff, not previously achieved with alternative techniques,
is obtained by breaking the usual symmetry between sender and
receiver present in statistical adaptive compression. Moreover,
we show that our technique can be adapted to avoid decompression
at all in cases where the receiver only wants to detect the presence
of some keywords in the document, which is useful in scenarios such as
selective dissemination of information, news clipping, alert
systems, text categorization, and clustering. We show that, thanks to
the same asymmetry, the receiver can search the compressed text much
faster than the plain text. This was previously achieved only in
semistatic compression scenarios.