147 research outputs found
Qualitative System Identification from Imperfect Data
Experience in the physical sciences suggests that the only realistic means of
understanding complex systems is through the use of mathematical models.
Typically, this has come to mean the identification of quantitative models
expressed as differential equations. Quantitative modelling works best when the
structure of the model (i.e., the form of the equations) is known; and the
primary concern is one of estimating the values of the parameters in the model.
For complex biological systems, the model-structure is rarely known and the
modeler has to deal with both model-identification and parameter-estimation. In
this paper we are concerned with providing automated assistance to the first of
these problems. Specifically, we examine the identification by machine of the
structural relationships between experimentally observed variables. These
relationship will be expressed in the form of qualitative abstractions of a
quantitative model. Such qualitative models may not only provide clues to the
precise quantitative model, but also assist in understanding the essence of
that model. Our position in this paper is that background knowledge
incorporating system modelling principles can be used to constrain effectively
the set of good qualitative models. Utilising the model-identification
framework provided by Inductive Logic Programming (ILP) we present empirical
support for this position using a series of increasingly complex artificial
datasets. The results are obtained with qualitative and quantitative data
subject to varying amounts of noise and different degrees of sparsity. The
results also point to the presence of a set of qualitative states, which we
term kernel subsets, that may be necessary for a qualitative model-learner to
learn correct models. We demonstrate scalability of the method to biological
system modelling by identification of the glycolysis metabolic pathway from
data
Learning to Synthesize a 4D RGBD Light Field from a Single Image
We present a machine learning algorithm that takes as input a 2D RGB image
and synthesizes a 4D RGBD light field (color and depth of the scene in each ray
direction). For training, we introduce the largest public light field dataset,
consisting of over 3300 plenoptic camera light fields of scenes containing
flowers and plants. Our synthesis pipeline consists of a convolutional neural
network (CNN) that estimates scene geometry, a stage that renders a Lambertian
light field using that geometry, and a second CNN that predicts occluded rays
and non-Lambertian effects. Our algorithm builds on recent view synthesis
methods, but is unique in predicting RGBD for each light field ray and
improving unsupervised single image depth estimation by enforcing consistency
of ray depths that should intersect the same scene point. Please see our
supplementary video at https://youtu.be/yLCvWoQLnmsComment: International Conference on Computer Vision (ICCV) 201
Numerical reasoning with an ILP system capable of lazy evaluation and customised search
Using problem-speci®c background knowledge, computer programs developed within theframework of Inductive Logic Programming (ILP) have been used to construct restricted®rst-order logic solutions to scienti®c problems. However, their approach to the analysis ofdata with substantial numerical content has been largely limited to constructing clauses that:(a) provide qualitative descriptions (high'', low'' etc.) of the values of response variables;and (b) contain simple inequalities restricting the ranges of predictor variables. This has precludedthe application of such techniques to scienti®c and engineering problems requiring amore sophisticated approach. A number of specialised methods have been suggested to remedythis. In contrast, we have chosen to take advantage of the fact that the existing theoreticalframework for ILP places very few restrictions of the nature of the background knowledge.We describe two issues of implementation that make it possible to use background predicatesthat implement well-established statistical and numerical analysis procedures. Any improvementsin analytical sophistication that result are evaluated empirically using arti®cial andreal-life data. Experiments utilising arti®cial data are concerned with extracting constraintsfor response variables in the text-book problem of balancing a pole on a cart. They illustratethe use of clausal de®nitions of arithmetic and trigonometric functions, inequalities, multiplelinear regression, and numerical derivatives. A non-trivial problem concerning the predictionof mutagenic activity of nitroaromatic molecules is also examined. In this case, expert chemistshave been unable to devise a model for explaining the data. The result demonstrates the combineduse by an ILP program of logical and numerical capabilities to achieve an analysis thatincludes linear modelling, clustering and classi®cation. In all experiments, the predictions obtainedcompare favourably against benchmarks set by more traditional methods of quantitativemethods, namely, regression and neural-network
Preliminary screening of osteoporosis and osteopenia in middle aged urban women from Hyderabad (INDIA) using calcaneal QUS
Background: Osteoporosis is a major public health problem, associated with substantial morbidity and socio-economic burden. An early detection can help in reducing the fracture rates and overall socio-economic burden in such patients. The present study was carried out to screen the bone status (osteopenia and osteoporosis) above the age of 25 years in urban women population in this region.Methods: A hospital based study was carried out in 316 women by calculating T-scores utilizing calcaneal QUS as diagnostic tool.Results: The result suggested that a substantial female population had oesteopenia and osteoporosis after the age of 45 years. The incidence of osteoporosis was (20.25%) and osteopenia (36.79%) with maximum number of both osteoporosis and osteopenic women recorded in the age group of (55-64 years). After the age of 65 years, there was an almost 100% incidence of either osteopenia or osteoporosis, indicating that it increases with age and in postmenopausal period, thereby suggesting lack of estrogenic activity might be responsible for this increasing trend. Religion, caste and diet had an influence on the outcome of osteopenic and osteoporosis score in present study, but still it has to be substantiated by conducting larger randomized clinical trials in future.Conclusions: A substantial female population was screened for osteoporosis and osteopenia using calcaneal QUS method utilizing same WHO T score criteria that otherwise shall remain undiagnosed and face the complications and menace of osteoporosis.
Knowledge-based Analogical Reasoning in Neuro-symbolic Latent Spaces
Analogical Reasoning problems challenge both connectionist and symbolic AI
systems as these entail a combination of background knowledge, reasoning and
pattern recognition. While symbolic systems ingest explicit domain knowledge
and perform deductive reasoning, they are sensitive to noise and require inputs
be mapped to preset symbolic features. Connectionist systems on the other hand
can directly ingest rich input spaces such as images, text or speech and
recognize pattern even with noisy inputs. However, connectionist models
struggle to include explicit domain knowledge for deductive reasoning. In this
paper, we propose a framework that combines the pattern recognition abilities
of neural networks with symbolic reasoning and background knowledge for solving
a class of Analogical Reasoning problems where the set of attributes and
possible relations across them are known apriori. We take inspiration from the
'neural algorithmic reasoning' approach [DeepMind 2020] and use
problem-specific background knowledge by (i) learning a distributed
representation based on a symbolic model of the problem (ii) training
neural-network transformations reflective of the relations involved in the
problem and finally (iii) training a neural network encoder from images to the
distributed representation in (i). These three elements enable us to perform
search-based reasoning using neural networks as elementary functions
manipulating distributed representations. We test this on visual analogy
problems in RAVENs Progressive Matrices, and achieve accuracy competitive with
human performance and, in certain cases, superior to initial end-to-end
neural-network based approaches. While recent neural models trained at scale
yield SOTA, our novel neuro-symbolic reasoning approach is a promising
direction for this problem, and is arguably more general, especially for
problems where domain knowledge is available.Comment: 13 pages, 4 figures, Accepted at 16th International Workshop on
Neural-Symbolic Learning and Reasoning as part of the 2nd International Joint
Conference on Learning & Reasoning (IJCLR 2022
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