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Giovanni Soda

Researcher at University of Florence

Publications -  100
Citations -  2747

Giovanni Soda is an academic researcher from University of Florence. The author has contributed to research in topics: Recurrent neural network & Visual Word. The author has an hindex of 26, co-authored 100 publications receiving 2627 citations. Previous affiliations of Giovanni Soda include IEEE Computer Society.

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Exploiting the past and the future in protein secondary structure prediction.

TL;DR: A family of novel architectures which can learn to make predictions based on variable ranges of dependencies are introduced, extending recurrent neural networks and introducing non-causal bidirectional dynamics to capture both upstream and downstream information.
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Local feedback multilayered networks

TL;DR: The capabilities of local feedback multilayered networks, a particular class of recurrent networks, in which feedback connections are only allowed from neurons to themselves are investigated.
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Artificial neural networks for document analysis and recognition

TL;DR: This paper surveys the most significant problems in the area of offline document image processing, where connectionist-based approaches have been applied and depicts the most promising research guidelines in the field.
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INFORMys: a flexible invoice-like form-reader system

TL;DR: A flexible form-reader system capable of extracting textual information from accounting documents, like invoices and bills of service companies, is described by means of attributed relational graphs, which turn out to be very effective for form registration, as well as for performing a focused search for instruction fields.
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Representation of finite state automata in recurrent radial basis function networks

TL;DR: In this paper, some techniques for injecting finite state automata into Recurrent Radial Basis Function networks (R2BF) are proposed and it is shown that these networks behave as automata.