123 research outputs found
Learning Probabilistic Logic Programs over Continuous Data
The field of statistical relational learning aims at unifying logic and probability to reason and learn from data. Perhaps the most successful paradigm in the field is probabilistic logic programming (PLP): the enabling of stochastic primitives in logic programming. While many systems offer inference capabilities, the more significant challenge is that of learning meaningful and interpretable symbolic representations from data. In that regard, inductive logic programming and related techniques have paved much of the way for the last few decades, but a major limitation of this exciting landscape is that only discrete features and distributions are handled. Many disciplines express phenomena in terms of continuous models. In this paper, we propose a new computational framework for inducing probabilistic logic programs over continuous and mixed discrete-continuous data. Most significantly, we show how to learn these programs while making no assumption about the true underlying density. Our experiments show the promise of the proposed framework.<br/
The influence of social support on strengthening families of children with chronic renal failure
Retaguarda Emocional Para o Aluno de Medicina da Santa Casa de São Paulo (REPAM): realizações e reflexões
Implantação de mentoria on-line em uma faculdade de medicina durante a pandemia da Covid-19
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