536 research outputs found
Unemployment as a social cost
Over the last decade, workfare programmes provided support to the unemployed only insofar as they were willing to accept a job. The theoretical underpinnings of these programmes are that institutional constraints prevent labour supply from adjusting to the technologically determined requirements of labour demand. We contend that when individuals look for a job, they generally want to take into account non-monetary features such as occupational status. Status cannot be traded, it usually is complementary to income, it determines lifestyles and life possibilities. As for labour demand, its requirements do not reflect efficient behaviour and technical constraints because business âefficiencyâ cannot be taken to be a measure of social efficiency and technology cannot be used as a benchmark to assess the efficiency of business conduct. We suggest that Senâs notion of capabilities may constitute an appropriate benchmark to assess the social efficiency of the economic system. This leads us to a few policy implications. The âcapabilities benchmarkâ leads us to stress the importance of freedom to choose how to conduct oneâs life. Acting in favour of freedom involves the understanding of how business strategies affect learning patterns and available choice sets. It also involves the assessment of policy issues - such as cooperation between the scientific community and business, scientific freedom, educational goals and their institutional implementation, and unemployment relief systems - which may influence the relation between business strategies and social learning.
Introduzione allâarcheologia del paesaggio. Geografia cosmica, simulazioni geomatiche, ricostruzioni potenziali e ipersuperfici neurali
Lâarcheologia ha da sempre descritto, analizzato e discusso la spazialitaÌ del ritrovamento ma, come per la datazione, anche la collocazione geografica di un documento, il suo posizionamento topografico e la sua rappresentazione carografica sono tecniche destinate ad esplorare il territorio, tecniche che sono cambiate nel tempo, in rapporto al trasformarsi delle percezioni spaziali (dei paesaggi, dei luoghi, dei ânonâ-luoghi), e con la conquista di altri punti di vista introdotti dalle relazioni interdisciplinari che lo studio del passato ha tracciato con la geomatica e le neuroscienze, relazioni capaci di potenziare la nostra percezione del micro e del macro-cosmo. Nel riconoscere alcuni lineamenti di queste trasformazioni potremmo risa- lire molto indietro nel tempo, ma sarebbe poi artificioso tentare di restituirli tutti ad una sequenza diacronica e rischiare di segnarli come âtrattiâ di un processo scientifico evolutivo, universale, ortogenetico. E allora cercheremo di procedere discutendo alcune delle diverse concezioni spaziali, come se queste fossero paradigmi complementari di lettura e misurazione della terra e degli uomini, paradigmi pluristratificati che affiorano sino allâetaÌ contemporanea e che stanno formando lâepistemologia stessa di quella che oggi, traducendo la definizione inglese di Landscape Archaeology, definiamo come Archeologia del Paesaggio. Questa nuova disciplina delle scienze storiche e archeologiche do- cumenta e analizza la complessa fenomenologia del rapporto tra ambiente, territorio e mobilitaÌ umana
Archeologia e traduzione. Prolegomena alla meccanografia e alla simulazione artificiale del sema
La traduzione di un dato archeologico in unitaÌ significante puoÌ apparire un processo tautologico, meccanico, ma essa riflette invece un percorso di cono- scenza, vincolato alla scelta di parametri analitici. In quanto processo cognitivo, questa traduzione avviene anche secondo principi di logica che tendono a or- ganizzare, in forma quanto piuÌ razionale, la documentazione raccolta; un dato diviene cosiÌ il sema di una struttura piuÌ coerente il cui valore espressivo potraÌ essere rilevato tramite le dottrine dei segni.
Dâaltronde, il record archeologico rientra sempre in un processo comunicativo, prima di essere un reperto, un documento o una testimonianza eÌ solo un segno, tra gli infiniti, dello scambio informativo, e il suo luogo di ritrovamento come il testo, deflagrato, di un linguaggio estinto. Il presente contributo, dedi-
cato al tema interdisciplinare della traduzione, saraÌ dunque un ulteriore tentativo di storicizzare la recente applicazione di modelli della biologia 17 computazionale alla ricostruzione e allâanalisi dei fenomeni naturali e culturali complessi. Tali fenomeni sono qui intesi â essenzialmente â come segmenti
della realtaÌ empirica commutabile in codici alfanumerici; matrici, dunque, di un sistema che potraÌ essere interrogato
The Ebla Archaeological Park. Natural, Archaeological and Artificial Italian Portrait of the Ancient Syrian Capital
The paper focused on three interacted topics. At least will be critically discussed the methodological guidelines of the Ebla Archaeological Park that were listed in Paris during the Third ICAANE; second will be presented some of the archaeological discoveries strictly related to those methodological guidelines; third will be presented some of the last archaeological monuments and landscapes visual transformations of Tell Mardikh strictly related to the archaeological and conservation works activities
A Model of Colonic Crypts using SBML Spatial
The Spatial Processes package enables an explicit definition of a spatial
environment on top of the normal dynamic modeling SBML capabilities. The
possibility of an explicit representation of spatial dynamics increases the
representation power of SBML. In this work we used those new SBML features to
define an extensive model of colonic crypts composed of the main cellular types
(from stem cells to fully differentiated cells), alongside their spatial
dynamics.Comment: In Proceedings Wivace 2013, arXiv:1309.712
The Ideological and Aesthetic Relationship Between Ur And Ebla During The Third Millennium B. C
The paper focus on the main economic differences related to secondary urbanism processes in Lower Mesopotamia and Northern Syria and will compare some of the extraordinary art masterpieces (collected during excavations) from the Early Dynastic and Early Syrian periods, such as composite works that adopted more ancient aesthetic concepts. The economic difference between these two urbanisms and the technological analogy between their official figurative representations will reveal that the two worlds had similar aesthetic concepts which came from the Sumerian habitus. This was not only linguistically âideographicâ, but also cognitive and political
Efficient computational strategies to learn the structure of probabilistic graphical models of cumulative phenomena
Structural learning of Bayesian Networks (BNs) is a NP-hard problem, which is
further complicated by many theoretical issues, such as the I-equivalence among
different structures. In this work, we focus on a specific subclass of BNs,
named Suppes-Bayes Causal Networks (SBCNs), which include specific structural
constraints based on Suppes' probabilistic causation to efficiently model
cumulative phenomena. Here we compare the performance, via extensive
simulations, of various state-of-the-art search strategies, such as local
search techniques and Genetic Algorithms, as well as of distinct regularization
methods. The assessment is performed on a large number of simulated datasets
from topologies with distinct levels of complexity, various sample size and
different rates of errors in the data. Among the main results, we show that the
introduction of Suppes' constraints dramatically improve the inference
accuracy, by reducing the solution space and providing a temporal ordering on
the variables. We also report on trade-offs among different search techniques
that can be efficiently employed in distinct experimental settings. This
manuscript is an extended version of the paper "Structural Learning of
Probabilistic Graphical Models of Cumulative Phenomena" presented at the 2018
International Conference on Computational Science
Parallel Implementation of Efficient Search Schemes for the Inference of Cancer Progression Models
The emergence and development of cancer is a consequence of the accumulation
over time of genomic mutations involving a specific set of genes, which
provides the cancer clones with a functional selective advantage. In this work,
we model the order of accumulation of such mutations during the progression,
which eventually leads to the disease, by means of probabilistic graphic
models, i.e., Bayesian Networks (BNs). We investigate how to perform the task
of learning the structure of such BNs, according to experimental evidence,
adopting a global optimization meta-heuristics. In particular, in this work we
rely on Genetic Algorithms, and to strongly reduce the execution time of the
inference -- which can also involve multiple repetitions to collect
statistically significant assessments of the data -- we distribute the
calculations using both multi-threading and a multi-node architecture. The
results show that our approach is characterized by good accuracy and
specificity; we also demonstrate its feasibility, thanks to a 84x reduction of
the overall execution time with respect to a traditional sequential
implementation
Modeling cumulative biological phenomena with Suppes-Bayes Causal Networks
Several diseases related to cell proliferation are characterized by the
accumulation of somatic DNA changes, with respect to wildtype conditions.
Cancer and HIV are two common examples of such diseases, where the mutational
load in the cancerous/viral population increases over time. In these cases,
selective pressures are often observed along with competition, cooperation and
parasitism among distinct cellular clones. Recently, we presented a
mathematical framework to model these phenomena, based on a combination of
Bayesian inference and Suppes' theory of probabilistic causation, depicted in
graphical structures dubbed Suppes-Bayes Causal Networks (SBCNs). SBCNs are
generative probabilistic graphical models that recapitulate the potential
ordering of accumulation of such DNA changes during the progression of the
disease. Such models can be inferred from data by exploiting likelihood-based
model-selection strategies with regularization. In this paper we discuss the
theoretical foundations of our approach and we investigate in depth the
influence on the model-selection task of: (i) the poset based on Suppes' theory
and (ii) different regularization strategies. Furthermore, we provide an
example of application of our framework to HIV genetic data highlighting the
valuable insights provided by the inferred
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