A Web application is a piece of software whose execution is split between the client and the server, and it sends data between the two sides every time you do something significant—even, perhaps, on every single keystroke. Inevitably, the volume of data has some correlation with the action performed. Since most Web applications are offered to the general public at low or no cost, an adversary can map out much of its internal state machine and develop a model that lets them deduce what someone’s doing from an observed sequence of packets.   This has been successfully applied (in the lab) to Web applications for highly sensitive tasks, such as tax preparation and medical advice.
The only known solution to this problem is to pad the amount of data passed over the network in each direction so that the adversary cannot learn anything about the state of the web application from an observed sequence of packets. Unfortunately, the obvious way to do this involves unacceptably high levels of overhead—this paper quotes  as observing
21074% overhead for a well-known online tax system. Today’s paper proposes that techniques from the field of privacy-preserving data publishing (PPDP, ) be brought to bear on the problem.
The paper is mathematically heavy going and I’m not going to go into details of their exact proposal, because it’s really just a starting point. Instead, I’m going to pull out some interesting observations:
More padding is not always better. They show an example case where padding messages to a multiple of 128 bytes is exactly as good as padding them to a multiple of 512 bytes, and padding them to a multiple of 520 bytes is worse.
Computing the optimal amount of padding for a web application (as they define it) is NP-hard even with complete, ideal knowledge of its behavior. However, there are reasonably efficient and speedy approximations—if I understood them correctly, it might even be feasible to apply one of their algorithms on the fly with each client.
Because optimality is defined over an entire sequence of user interactions with an application, knowing how much padding to send in response to any given request may require the server to predict the future. Again, however, there are approximations that avoid this problem.
PPDP offers a whole bunch of different ways to model the degree to which one has mitigated the information leak: k-anonymity is the model they spend the most time on, but there’s also l-diversity, (α, k)-anonymity, t-closeness, etc. etc. I don’t follow that literature but I have the impression people are still actively making up new models and haven’t spent a whole lot of time on figuring out which is best in which situations.
The great failing of this and all the other papers I’ve ever read in this area is operationalization. This paper’s algorithms need a complete, or nearly so, map of all possible sequences of states that a Web application can enter, and the authors shrug off the question of how you create this map in the first place. (I very strongly suspect that task can’t be mechanized in the general case—it will turn out to be the Halting Problem in another of its many disguises.) They also don’t seem to realize that things like Google search suggestions (the running example in the paper) are constantly changing. (Of course, that makes life harder for the adversary too.) This doesn’t mean there is no hope; it only means you need more approximations. I think it ought to be possible to build good-enough automatic padding into CMSes, and maybe even into web application frameworks. Trying that should be a priority for future research.