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The book offers an interdisciplinary perspective on finance, with a
special focus on stock markets. It presents new methodologies for
analyzing stock markets' behavior and discusses theories and
methods of finance from different angles, such as the mathematical,
physical and philosophical ones. The book, which aims at
philosophers and economists alike, represents a rare yet important
attempt to unify the externalist with the internalist conceptions
of finance.
The book answers long-standing questions on scientific modeling and
inference across multiple perspectives and disciplines, including
logic, mathematics, physics and medicine. The different chapters
cover a variety of issues, such as the role models play in
scientific practice; the way science shapes our concept of models;
ways of modeling the pursuit of scientific knowledge; the
relationship between our concept of models and our concept of
science. The book also discusses models and scientific
explanations; models in the semantic view of theories; the
applicability of mathematical models to the real world and their
effectiveness; the links between models and inferences; and models
as a means for acquiring new knowledge. It analyzes different
examples of models in physics, biology, mathematics and
engineering. Written for researchers and graduate students, it
provides a cross-disciplinary reference guide to the notion and the
use of models and inferences in science.
How can we advance knowledge? Which methods do we need in order to
make new discoveries? How can we rationally evaluate, reconstruct
and offer discoveries as a means of improving the 'method' of
discovery itself? And how can we use findings about scientific
discovery to boost funding policies, thus fostering a deeper impact
of scientific discovery itself? The respective chapters in this
book provide readers with answers to these questions. They focus on
a set of issues that are essential to the development of types of
reasoning for advancing knowledge, such as models for both
revolutionary findings and paradigm shifts; ways of rationally
addressing scientific disagreement, e.g. when a revolutionary
discovery sparks considerable disagreement inside the scientific
community; frameworks for both discovery and inference methods; and
heuristics for economics and the social sciences.
La plausibilita, quale strumento per costruire e valutare ipotesi e
guidare l'azione, e un concetto che nasce da un'esigenza
fondamentale non solo dell'impresa conoscitiva, ma dell'uomo in
quanto tale: quella di limitare e gestire l'incertezza e la
provvisorieta che contraddistinguono ogni aspetto della sua
esistenza. Il libro, mediante alcuni richiami storici, fornisce
un'analisi delle teorie e dei modelli della plausibilita, sia nella
sua versione probabilistica sia in quella non-probabilistica,
sviluppando una prospettiva che propone un superamento
dell'opposizione tra vero e plausibile.
The book offers an interdisciplinary perspective on finance, with a
special focus on stock markets. It presents new methodologies for
analyzing stock markets' behavior and discusses theories and
methods of finance from different angles, such as the mathematical,
physical and philosophical ones. The book, which aims at
philosophers and economists alike, represents a rare yet important
attempt to unify the externalist with the internalist conceptions
of finance.
The book answers long-standing questions on scientific modeling and
inference across multiple perspectives and disciplines, including
logic, mathematics, physics and medicine. The different chapters
cover a variety of issues, such as the role models play in
scientific practice; the way science shapes our concept of models;
ways of modeling the pursuit of scientific knowledge; the
relationship between our concept of models and our concept of
science. The book also discusses models and scientific
explanations; models in the semantic view of theories; the
applicability of mathematical models to the real world and their
effectiveness; the links between models and inferences; and models
as a means for acquiring new knowledge. It analyzes different
examples of models in physics, biology, mathematics and
engineering. Written for researchers and graduate students, it
provides a cross-disciplinary reference guide to the notion and the
use of models and inferences in science.
How can we advance knowledge? Which methods do we need in order to
make new discoveries? How can we rationally evaluate, reconstruct
and offer discoveries as a means of improving the 'method' of
discovery itself? And how can we use findings about scientific
discovery to boost funding policies, thus fostering a deeper impact
of scientific discovery itself? The respective chapters in this
book provide readers with answers to these questions. They focus on
a set of issues that are essential to the development of types of
reasoning for advancing knowledge, such as models for both
revolutionary findings and paradigm shifts; ways of rationally
addressing scientific disagreement, e.g. when a revolutionary
discovery sparks considerable disagreement inside the scientific
community; frameworks for both discovery and inference methods; and
heuristics for economics and the social sciences.
Le inferenze sono definite ampliative quando permettono di
estendere - ampliare - le nostre conoscenze, nel senso che i dati e
le informazioni contenute nella conclusione non sono contenute
nelle premesse, come avviene nel caso delle inferenze
non-ampliative (ossia quelle deduttive). Esse sono il principale
motore di avanzamento e crescita della conoscenza, in particolare
di quella matematica. Il testo, usando alcuni esempi tratti dalla
teoria dei numeri, la teoria dei nodi e la teoria delle trecce,
fornisce un'analisi di queste forme inferenziali esaminandone tre
articolazioni concettuali particolarmente significative quali la
visualizzazione, l'analogia e le rappresentazioni multiple, e ne
discute propriet, statuto e alcune loro rilevanti implicazioni
epistemologiche, in particolare la loro relazione con la verit. Il
testo sostiene la tesi che le conoscenze originate dalle inferenze
ampliative hanno in un senso preciso lo stesso statuto di quelle
generate dalle inferenze non-ampliative.
This book explores new findings on the long-neglected topic of
theory construction and discovery, and challenges the orthodox,
current division of scientific development into discrete stages:
the stage of generation of new hypotheses; the stage of collection
of relevant data; the stage of justification of possible theories;
and the final stage of selection from among equally confirmed
theories. The chapters, written by leading researchers, offer an
interdisciplinary perspective on various aspects of the processes
by which theories rationally should, and descriptively are, built.
They address issues such as the role of problem-solving and
heuristic reasoning in theory-building; how inferences and models
shape the pursuit of scientific knowledge; the relation between
problem-solving and scientific discovery; the relative values of
the syntactic, semantic, and pragmatic view of theories in
understanding theory construction; and the relation between
ampliative inferences, heuristic reasoning, and models as a means
for building new theories and knowledge. Through detailed arguments
and examinations, the volume collectively challenges the orthodox
view's main tenets by characterizing the ways in which the
different "stages" are logically, temporally, and psychologically
intertwined. As a group, the chapters provide several attempts to
answer long-standing questions about the possibility of a unified
conceptual framework for building theories and formulating
hypotheses.
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