1,367 research outputs found
On the -Enumeration of Barely Set-Valued Tableaux and Plane Partitions
Barely set-valued tableaux are a variant of Young tableaux in which one box
contains two numbers as its entry. It has recently been discovered that there
are product formulas enumerating certain classes of barely set-valued tableaux.
We give some q-analogs of these product formulas by introducing a version of
major index for these tableaux. We also give product formulas and q-analogs for
barely set-valued plane partitions. The proofs use several probability
distributions on the set of order ideals of a poset, depending on the real
parameter q > 0, which we think could be of independent interest.Comment: 38 pages, 6 tables, 3 figure
A Computational Framework for Solving Wasserstein Lagrangian Flows
The dynamical formulation of the optimal transport can be extended through
various choices of the underlying geometry (), and the
regularization of density paths (). These
combinations yield different variational problems (),
encompassing many variations of the optimal transport problem such as the
Schr\"odinger bridge, unbalanced optimal transport, and optimal transport with
physical constraints, among others. In general, the optimal density path is
unknown, and solving these variational problems can be computationally
challenging. Leveraging the dual formulation of the Lagrangians, we propose a
novel deep learning based framework approaching all of these problems from a
unified perspective. Our method does not require simulating or backpropagating
through the trajectories of the learned dynamics, and does not need access to
optimal couplings. We showcase the versatility of the proposed framework by
outperforming previous approaches for the single-cell trajectory inference,
where incorporating prior knowledge into the dynamics is crucial for correct
predictions
DynGFN: Towards Bayesian Inference of Gene Regulatory Networks with GFlowNets
One of the grand challenges of cell biology is inferring the gene regulatory
network (GRN) which describes interactions between genes and their products
that control gene expression and cellular function. We can treat this as a
causal discovery problem but with two non-standard challenges: (1) regulatory
networks are inherently cyclic so we should not model a GRN as a directed
acyclic graph (DAG), and (2) observations have significant measurement noise,
so for typical sample sizes there will always be a large equivalence class of
graphs that are likely given the data, and we want methods that capture this
uncertainty. Existing methods either focus on challenge (1), identifying cyclic
structure from dynamics, or on challenge (2) learning complex Bayesian
posteriors over DAGs, but not both. In this paper we leverage the fact that it
is possible to estimate the "velocity" of gene expression with RNA velocity
techniques to develop an approach that addresses both challenges. Because we
have access to velocity information, we can treat the Bayesian structure
learning problem as a problem of sparse identification of a dynamical system,
capturing cyclic feedback loops through time. Since our objective is to model
uncertainty over discrete structures, we leverage Generative Flow Networks
(GFlowNets) to estimate the posterior distribution over the combinatorial space
of possible sparse dependencies. Our results indicate that our method learns
posteriors that better encapsulate the distributions of cyclic structures
compared to counterpart state-of-the-art Bayesian structure learning
approaches
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