Multi-Entity Dependence Learning with Rich Context via Conditional Variational Auto-encoder

09/17/2017
by   Luming Tang, et al.
0

Multi-Entity Dependence Learning (MEDL) explores conditional correlations among multiple entities. The availability of rich contextual information requires a nimble learning scheme that tightly integrates with deep neural networks and has the ability to capture correlation structures among exponentially many outcomes. We propose MEDL_CVAE, which encodes a conditional multivariate distribution as a generating process. As a result, the variational lower bound of the joint likelihood can be optimized via a conditional variational auto-encoder and trained end-to-end on GPUs. Our MEDL_CVAE was motivated by two real-world applications in computational sustainability: one studies the spatial correlation among multiple bird species using the eBird data and the other models multi-dimensional landscape composition and human footprint in the Amazon rainforest with satellite images. We show that MEDL_CVAE captures rich dependency structures, scales better than previous methods, and further improves on the joint likelihood taking advantage of very large datasets that are beyond the capacity of previous methods.

READ FULL TEXT

page 2

page 4

page 9

page 12

research
03/22/2018

End-to-End Learning for the Deep Multivariate Probit Model

The multivariate probit model (MVP) is a popular classic model for study...
research
11/10/2019

Pre-train and Plug-in: Flexible Conditional Text Generation with Variational Auto-Encoders

Current neural Natural Language Generation (NLG) models cannot handle em...
research
10/30/2020

Deep Hurdle Networks for Zero-Inflated Multi-Target Regression: Application to Multiple Species Abundance Estimation

A key problem in computational sustainability is to understand the distr...
research
11/12/2021

Diversity-Promoting Human Motion Interpolation via Conditional Variational Auto-Encoder

In this paper, we present a deep generative model based method to genera...
research
04/30/2023

Learning Structured Output Representations from Attributes using Deep Conditional Generative Models

Structured output representation is a generative task explored in comput...
research
04/23/2020

Conditional Variational Image Deraining

Image deraining is an important yet challenging image processing task. T...
research
09/27/2021

DOODLER: Determining Out-Of-Distribution Likelihood from Encoder Reconstructions

Deep Learning models possess two key traits that, in combination, make t...

Please sign up or login with your details

Forgot password? Click here to reset