7,294 research outputs found
Logic-Based Decision Support for Strategic Environmental Assessment
Strategic Environmental Assessment is a procedure aimed at introducing
systematic assessment of the environmental effects of plans and programs. This
procedure is based on the so-called coaxial matrices that define dependencies
between plan activities (infrastructures, plants, resource extractions,
buildings, etc.) and positive and negative environmental impacts, and
dependencies between these impacts and environmental receptors. Up to now, this
procedure is manually implemented by environmental experts for checking the
environmental effects of a given plan or program, but it is never applied
during the plan/program construction. A decision support system, based on a
clear logic semantics, would be an invaluable tool not only in assessing a
single, already defined plan, but also during the planning process in order to
produce an optimized, environmentally assessed plan and to study possible
alternative scenarios. We propose two logic-based approaches to the problem,
one based on Constraint Logic Programming and one on Probabilistic Logic
Programming that could be, in the future, conveniently merged to exploit the
advantages of both. We test the proposed approaches on a real energy plan and
we discuss their limitations and advantages.Comment: 17 pages, 1 figure, 26th Int'l. Conference on Logic Programming
(ICLP'10
A Full Probabilistic Model for Yes/No Type Crowdsourcing in Multi-Class Classification
Crowdsourcing has become widely used in supervised scenarios where training
sets are scarce and difficult to obtain. Most crowdsourcing models in the
literature assume labelers can provide answers to full questions. In
classification contexts, full questions require a labeler to discern among all
possible classes. Unfortunately, discernment is not always easy in realistic
scenarios. Labelers may not be experts in differentiating all classes. In this
work, we provide a full probabilistic model for a shorter type of queries. Our
shorter queries only require "yes" or "no" responses. Our model estimates a
joint posterior distribution of matrices related to labelers' confusions and
the posterior probability of the class of every object. We developed an
approximate inference approach, using Monte Carlo Sampling and Black Box
Variational Inference, which provides the derivation of the necessary
gradients. We built two realistic crowdsourcing scenarios to test our model.
The first scenario queries for irregular astronomical time-series. The second
scenario relies on the image classification of animals. We achieved results
that are comparable with those of full query crowdsourcing. Furthermore, we
show that modeling labelers' failures plays an important role in estimating
true classes. Finally, we provide the community with two real datasets obtained
from our crowdsourcing experiments. All our code is publicly available.Comment: SIAM International Conference on Data Mining (SDM19), 9 official
pages, 5 supplementary page
Social Collaborative Retrieval
Socially-based recommendation systems have recently attracted significant
interest, and a number of studies have shown that social information can
dramatically improve a system's predictions of user interests. Meanwhile, there
are now many potential applications that involve aspects of both recommendation
and information retrieval, and the task of collaborative retrieval---a
combination of these two traditional problems---has recently been introduced.
Successful collaborative retrieval requires overcoming severe data sparsity,
making additional sources of information, such as social graphs, particularly
valuable. In this paper we propose a new model for collaborative retrieval, and
show that our algorithm outperforms current state-of-the-art approaches by
incorporating information from social networks. We also provide empirical
analyses of the ways in which cultural interests propagate along a social graph
using a real-world music dataset.Comment: 10 page
- …