267 research outputs found
A Critical Look at the Abstraction Based on Macro-Operators
Abstraction can be an effective technique for dealing with
the complexity of planning tasks. This paper is aimed at assessing and
identifying in which cases abstraction can actually speed-up the overall
search. In fact, it is well known that the impact of abstraction on the
time spent to search for a solution of a planning problem can be positive
or negative, depending on several factors -including the number of objects
defined in the domain, the branching factor, and the plan length.
Experimental results highlight the role of such aspects on the overall performance
of an algorithm that performs the search at the ground-level
only, and compares them with the ones obtained by enforcing abstraction
An Adaptive Approach for Planning in Dynamic Environments
Planning in a dynamic environment is a
complex task that requires several issues to be
investigated in order to manage the associated
search complexity. In this paper, an adaptive
behavior that integrates planning with learning
is presented. The former is performed adopting a
hierarchical approach, interleaved with
execution. The latter, devised to identify new
abstract operators, adopts a chunking technique
on successful plans. Integration between
planning and learning is also promoted by an
agent architecture explicitly designed for
supporting abstraction
Experimenting Abstraction Mechanisms Through an Agent-Based Hierarchical Planner
In this paper, an agent-based architecture devised
to perform experiments on hierarchical planning is described.
The planning activity results from the interaction of a
community of agents, some of them being explicitly devoted to
embed one or more existing planners. The proposed
architecture allows to exploit the characteristics of any external
planner, under the hypothesis that a suitable wrapper –in form
of planning agent– is provided. An implementation of the
architecture, able to embed one planner of the graphplan
family, has been used to directly assess whether or not
abstraction mechanisms can help to reduce the time complexity
of the search on specific domains. Some preliminary
experiments are reported, focusing on problems taken from the
AIPS 2002, 2000 and 1998 planning competitions. Comparative
results, obtained by assessing the performances of the selected
planner (used first in a stand-alone configuration and then
embedded into the proposed multi-agent architecture), put into
evidence that abstraction may significantly speed up the search
Personalized Text Categorization Using a MultiAgent Architecture
In this paper, a system able to retrieve contents deemed
relevant for the users through a text categorization process,
is presented. The system is built exploiting a generic
multiagent architecture that supports the implementation
of applications aimed at (i) retrieving heterogeneous data
spread among different sources (e.g., generic html pages,
news, blogs, forums, and databases); (ii) filtering and organizing
them according to personal interests explicitly stated
by each user; (iii) providing adaptation techniques to improve
and refine throughout time the profile of each selected
user. In particular, the implemented multiagent system creates
personalized press-revies from online newspapers. Preliminary
results are encouraging and highlight the effectiveness
of the approach
Developing an ML pipeline for asthma and COPD: The case of a Dutch primary care service
A complex combination of clinical, demographic and lifestyle parameters determines the correct diagnosis and the most effective treatment for asthma and Chronic Obstructive Pulmonary Disease patients. Artificial Intelligence techniques help clinicians in devising the correct diagnosis and designing the most suitable clinical pathway accordingly, tailored to the specific patient conditions. In the case of machine learning (ML) approaches, availability of real-world patient clinical data to train and evaluate the ML pipeline deputed to assist clinicians in their daily practice is crucial. However, it is common practice to exploit either synthetic data sets or heavily preprocessed collections cleaning and merging different data sources. In this paper, we describe an automated ML pipeline designed for a real-world data set including patients from a Dutch primary care service, and provide a performance comparison of different prediction models for (i) assessing various clinical parameters, (ii) designing interventions, and (iii) defining the diagnosis
Higher and lower supramolecular orders for the design of self-assembled heterochiral tripeptide hydrogel biomaterials
The self-assembly behaviour of the eight stereoisomers of Val\u2013Phe\u2013Phe tripeptides under physiological conditions is assessed by several spectroscopy and microscopy techniques. We report the first examples of self-organised hydrogels from tripeptides in the L\u2013D\u2013L or D\u2013L\u2013D configuration, besides the expected gels with the D\u2013L\u2013L or L\u2013D\u2013D configuration, thus widening the scope for using amino acid chirality as a tool to drive self-assembly. Importantly, the positions of D- and L-amino acids in the gelling tripeptides determine a higher or lower supramolecular order, which translates into macroscopic gels with different rheological properties and thermal behaviours. The more durable hydrogels perform well in cytotoxicity assays, and also as peptides in solution. An appropriate design of the chirality of self-assembling sequences thus allows for the fine-tuning of the properties of the gel biomaterials. In conclusion, this study adds key details of supramolecular organization that will assist in the ex novo design of assembling chiral small molecules for their use as biomaterials
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