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OLED lighting and use in new developments

 Preface In this article taken OLED technology explaining the basic operation and some models currently produced. How to write in this technology is designed more for display and for light production environments. I hope I can go into that with your comments. Introduction Everyone knows the well-established LED technology and its applications, especially in the field of lighting and electronics. The LED is a special suitably doped diode that generates photons subjected to a voltage. The color of the emitted... More
Category : Optoelectronics

8-Valent Fuzzy Logic for Iris Recognition and Biometry

Abstract- This paper shows that maintaining logical consistency of an iris recognition system is a matter of finding a suitable partitioning of the input space in enrollable and unenrollable pairs by negotiating the user comfort and the safety of the biometric system. In other words, consistent enrollment is mandatory in order to preserve system consistency. A fuzzy 3-valent disambiguated model of iris recognition is proposed and analyzed in terms of completeness, consistency, user comfort and biometric safety. It is also... More
Category : Artificial Intelligence


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Improving parameter learning of Bayesian nets from incomplete dat

  Abstract This paper addresses the estimation of parameters of a Bayesian network from incomplete data. The task is usually tackled by running the Expectation-Maximization (EM) algorithm several times in order to obtain a high log-likelihood estimate. We argue that choosing the maximum log-likelihood estimate (as well as the maximum penalized log-likelihood and the maximum a posteriori estimate) has severe drawbacks, being affected both by overfitting and model uncertainty. Two ideas are discussed to overcome these issues: a maximum entropy... More
Category : Artificial Intelligence

Robust Image Analysis by L1-Norm Semi-supervised Learnin

This paper presents a novel L1-norm semisupervised learning algorithm for robust image analysis by giving new L1-norm formulation of Laplacian regularization which is the key step of graph-based semi-supervised learning. Since our L1-norm Laplacian regularization is defined directly over the eigenvectors of the normalized Laplacian matrix, we successfully formulate semi-supervised learning as an L1-norm linear reconstruction problem which can be effectively solved with sparse coding. By working with only a small subset of eigenvectors, we further develop a fast sparse... More
Category : Artificial Intelligence

Multiple-Goal Heuristic Search

  Abstract This paper presents a new framework for anytime heuristic search where the task is to achieve as many goals as possible within the allocated resources. We show the inadequacy of traditional distance-estimation heuristics for tasks of this type and present alternative heuristics that are more appropriate for multiple-goal search. In particular, we introduce the marginal-utility heuristic, which estimates the cost and the benefit of exploring a subtree below a search node. We developed two methods for online learning... More
Category : Artificial Intelligence

A Heuristic Search Planner for First-Order MDPs

  Abstract We present a heuristic search algorithm for solving first-order Markov Decision Processes (FOMDPs). Our approach combines first-order state abstraction that avoids evaluating states individually, and heuristic search that avoids evaluating all states. Firstly, in contrast to existing systems, which start with propositionalizing the FOMDP and then perform state abstraction on its propositionalized version we apply state abstraction directly on the FOMDP avoiding propositionalization. This kind of abstraction is referred to as first-order state abstraction. Secondly, guided by an... More
Category : Artificial Intelligence

Asynchronous Partial Overlay: A New Algorithm for Solving Distributed Constraint Satisfaction Problems

  Abstract Distributed Constraint Satisfaction (DCSP) has long been considered an important problem in multi-agent systems research. This is because many real-world problems can be represented as constraint satisfaction and these problems often present themselves in a distributed form. In this article, we present a new complete, distributed algorithm called asynchronous partial overlay (APO) for solving DCSPs that is based on a cooperative mediation process. The primary ideas behind this algorithm are that agents, when acting as a mediator, centralize... More
Category : Artificial Intelligence

A Visual Entity-Relationship Model for Constraint-Based

  Abstract University timetabling (UTT) is a complex problem due to its combinatorial nature but also the type of constraints involved. The holy grail of (constraint) programming: "the user states the problem the program solves it" remains a challenge since solution quality is tightly coupled with deriving "e ective models", best handled by technology experts. In this paper, focusing on the eld of university timetabling, we introduce a visual graphic communication tool that lets the user specify her problem in an... More
Category : Artificial Intelligence

Optiplan: Unifying IP-based and Graph-based Planning

  Abstract The Optiplan planning system is the first integer programming-based planner that successfully participated in the international planning competition. This engineering note describes the architecture of Optiplan and provides the integer programming formulation that enabled it to perform reasonably well in the competition. We also touch upon some recent developments that make integer programming encodings significantly more competitive. Introduction Optiplan is a planning system that uses integer linear programming (IP) to solve STRIPS planning problems. It is the first... More
Category : Artificial Intelligence

Approximate Policy Iteration with a Policy Language Bias: Solving Relational Markov Decision Processe

  Abstract We study an approach to policy selection for large relational Markov Decision Processes (MDPs). We consider a variant of approximate policy iteration (API) that replaces the usual value-function learning step with a learning step in policy space. This is advantageous in domains where good policies are easier to represent and learn than the corresponding value functions, which is often the case for the relational MDPs we are interested in. In order to apply API to such problems, we... More
Category : Artificial Intelligence

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