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GND: 132871580


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asymptotic learningcommunication networksocial cliquesinformation exchangeoligopoly equilibriacapacities pricesbest oligopolyoligopoly equilibriumdata trackingunderlying statetruthful communicationnetwork inducesinduces asymptoticequilibrium behavioraggregate welfaregame theoryrevenue managementsoziales netzwerksocial networkdynamics informationexchange endogenousendogenous socialdynamic gameservice providersprivate signalsocially optimalinduced communicationwelfare analysisdynamisches spielknowledge transfersoziale gruppesocial groupprice capacity
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Years of publications: 2006 - 2024

22 records from EconBiz based on author Name Information logo


1. Digital humans in fashion : will consumers interact?

Silva, Emmanuel Sirimal; Bonetti, Francesca;
2021
Type: Aufsatz in Zeitschrift; Article in journal;
Availability: Link
Citations: 43 (based on OpenCitations)

2. The science of statistics versus data science : what is the future?

Hassani, Hossein; Beneki, Christina; Silva, Emmanuel Sirimal; Vandeput, Nicolas; Madsen, Dag Øivind;
2021
Type: Aufsatz in Zeitschrift; Article in journal;
Availability: Link
Citations: 4 (based on OpenCitations)

3. UK mid-market department stores : is fashion product assortment one key to regaining competitive advantage?

Donnelly, Shannon; Gee, Liz; Silva, Emmanuel Sirimal;
2020
Type: Aufsatz in Zeitschrift; Article in journal;
Availability: Link
Citations: 14 (based on OpenCitations)

4. The application of big data in fashion retailing : a narrative review

Madsen, Dag Øivind; Silva, Emmanuel Sirimal; Hassani, Hossein;
2020
Type: Aufsatz in Zeitschrift; Article in journal;
Availability: Link Link

5. Fusing Big Data, Blockchain and Cryptocurrency : Their Individual and Combined Importance in the Digital Economy

abstract

1. Introduction -- 2. Big Data and Blockchain -- 3. Blockchain and Cryptocurrency -- 4. Big Data and Cryptocurrency -- 5. Fusing Big Data, Blockchain and Cryptocurrency.

Hassani, Hossein; Huang, Xu; Silva, Emmanuel Sirimal;
2019
Availability: Link
Citations: 6 (based on OpenCitations)

6. Fusing big data, blockchain and cryptocurrency : their individual and combined importance in the digital economy

abstract

1. Introduction -- 2. Big Data and Blockchain -- 3. Blockchain and Cryptocurrency -- 4. Big Data and Cryptocurrency -- 5. Fusing Big Data, Blockchain and Cryptocurrency.

Hassani, Hossein; Huang, Xu; Silva, Emmanuel Sirimal;
2019
Availability: Link
Citations: 6 (based on OpenCitations)

7. Monthly forecasting of GDP with mixed-frequency multivariate singular spectrum analysis

Hassani, Hossein; Rua, António; Silva, Emmanuel Sirimal; Thomakos, Dimitrios D.;
2019
Type: Aufsatz in Zeitschrift; Article in journal;
Availability: Link
Citations: 16 (based on OpenCitations)

8. Big data : a big opportunity for the petroleum and petrochemical industry

Hassani, Hossein; Silva, Emmanuel Sirimal;
2018
Type: Aufsatz in Zeitschrift; Article in journal;
Availability: Link Link
Citations: 36 (based on OpenCitations)

9. Forecasting UK consumer price inflation using inflation forecasts

Hassani, Hossein; Silva, Emmanuel Sirimal;
2018
Type: Aufsatz in Zeitschrift; Article in journal;
Availability: Link
Citations: 11 (based on OpenCitations)

10. Googling Fashion : Forecasting Fashion Consumer Behaviour Using Google Trends

abstract

This paper aims to discuss the current state of Google Trends as a useful tool for fashion consumer analytics, show the importance of being able to forecast fashion consumer trends and then presents a univariate forecast evaluation of fashion consumer Google Trends to motivate more academic research in this subject area. Using Burberry — a British luxury fashion house — as an example, we compare several parametric and nonparametric forecasting techniques to determine the best univariate forecasting model for “Burberry” Google Trends. In addition, we also introduce singular spectrum analysis as a useful tool for denoising fashion consumer Google Trends and apply a recently developed hybrid neural network model to generate forecasts. Our initial results indicate that there is no single univariate model (out of ARIMA, exponential smoothing, TBATS, and neural network autoregression) that can provide the best forecast of fashion consumer Google Trends for Burberry across all horizons. In fact, we find neural network autoregression (NNAR) to be the worst contender. We then seek to improve the accuracy of NNAR forecasts for fashion consumer Google Trends via the introduction of singular spectrum analysis for noise reduction in fashion data. The hybrid neural network model (Denoised NNAR) succeeds in outperforming all competing models across all horizons, with a majority of statistically significant outcomes at providing the best forecast for Burberry's highly seasonal fashion consumer Google Trends. In an era of big data, we show the usefulness of Google Trends, denoising and forecasting consumer behaviour for the fashion industry

Silva, Emmanuel Sirimal; Hassani, Hossein; Madsen, Dag Øivind; Gee, Liz;
2020
Availability: Link

The information on the author is retrieved from: Entity Facts (by DNB = German National Library data service), DBPedia and Wikidata

Kostas Bimpikis


Dr.

Biblio: Ph.D. in Operations Research, Massachusetts Inst. of Technology Operations Research Center, 2010

Affiliations

  • Stanford University. Graduate School of Business
  • External links

  • Gemeinsame Normdatei (GND) im Katalog der Deutschen Nationalbibliothek
  • Open Researcher and Contributor ID (ORCID)
  • NACO Authority File
  • Virtual International Authority File (VIAF)
  • Wikidata
  • International Standard Name Identifier (ISNI)

  • Official Website logo Official Website

    Google Scholar logo Google Scholar
    ORCID logo ORCID

    Publishing years

    2
      2024
    1
      2023
    3
      2021
    3
      2020
    7
      2019
    7
      2018
    3
      2016
    1
      2015
    2
      2014
    1
      2013
    1
      2012
    1
      2011
    6
      2010
    1
      2009
    2
      2008
    4
      2006

    Series

    1. Massachusetts Institute of Technology Department of Economics working paper series : working paper (3)
    2. MIT Department of Economics Working Paper (3)
    3. NBER working paper series (3)
    4. Stanford University Graduate School of Business Research Paper (2)
    5. Stanford University Graduate School of Business research paper (2)
    6. NBER Working Paper (2)
    7. Working paper / National Bureau of Economic Research, Inc. (2)
    8. Kelley School of Business Research Paper (1)
    9. NBER Working Paper Series (1)