Domenichelli, Daniele
(2021)
A procedure for modular forecasting at scale with constraints for business time series.
[Laurea magistrale], Università di Bologna, Corso di Studio in
Artificial intelligence [LM-DM270]
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Abstract
Nowadays artificial intelligence algorithms are capable to achieve
impressive results with a reduced amount of physical and time resources.
They cover many different topics with a discrete success, but one of the most
challenging subject to model is the prediction of future trends in complex and
mutable environments, such as market sales.
From a deterministic point of view, the knowledge of the exact state
and the rules of a system in a certain period intrinsically brings the faculty
to forecast any future state. This perspective yields an exact prediction, but
it lays its foundation on the assumption that its possible to model every aspect
of the system, a premise that is usually satisfied only in simple cases.
The difficulty of predicting time-series is amenable to many factors, one
of the most important is the drastically instable and mutable domain
subjected to the competitiveness of its constituents, vendors and buyers, as
described by the principles of the game theory; in such system, the rules are
constantly changing, hardening the predictions of future states.
Furthermore, financial studies produced a variety of economic models
which help to understand the market behaviour. By applying specific
constraints to the prediction, it is possible to exploit these models to reach
better and more explainable results and relate their components to the
relative sources.
The aim of this work is to propose a procedure capable of inject domain
constraints in the prediction in a declarative fashion, addressing different
economic models. This procedure helps the analysts to better express their
domain expertise while keeping a completely explainable approach to
describe their outcomes.
Abstract
Nowadays artificial intelligence algorithms are capable to achieve
impressive results with a reduced amount of physical and time resources.
They cover many different topics with a discrete success, but one of the most
challenging subject to model is the prediction of future trends in complex and
mutable environments, such as market sales.
From a deterministic point of view, the knowledge of the exact state
and the rules of a system in a certain period intrinsically brings the faculty
to forecast any future state. This perspective yields an exact prediction, but
it lays its foundation on the assumption that its possible to model every aspect
of the system, a premise that is usually satisfied only in simple cases.
The difficulty of predicting time-series is amenable to many factors, one
of the most important is the drastically instable and mutable domain
subjected to the competitiveness of its constituents, vendors and buyers, as
described by the principles of the game theory; in such system, the rules are
constantly changing, hardening the predictions of future states.
Furthermore, financial studies produced a variety of economic models
which help to understand the market behaviour. By applying specific
constraints to the prediction, it is possible to exploit these models to reach
better and more explainable results and relate their components to the
relative sources.
The aim of this work is to propose a procedure capable of inject domain
constraints in the prediction in a declarative fashion, addressing different
economic models. This procedure helps the analysts to better express their
domain expertise while keeping a completely explainable approach to
describe their outcomes.
Tipologia del documento
Tesi di laurea
(Laurea magistrale)
Autore della tesi
Domenichelli, Daniele
Relatore della tesi
Scuola
Corso di studio
Ordinamento Cds
DM270
Parole chiave
forecast,business,time-series,Prophet,Meta,Facebook,constraint,artificial intelligence
Data di discussione della Tesi
3 Dicembre 2021
URI
Altri metadati
Tipologia del documento
Tesi di laurea
(NON SPECIFICATO)
Autore della tesi
Domenichelli, Daniele
Relatore della tesi
Scuola
Corso di studio
Ordinamento Cds
DM270
Parole chiave
forecast,business,time-series,Prophet,Meta,Facebook,constraint,artificial intelligence
Data di discussione della Tesi
3 Dicembre 2021
URI
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