Centres Of Excellence

To focus on new and emerging areas of research and education, Centres of Excellence have been established within the Institute. These ‘virtual' centres draw on resources from its stakeholders, and interact with them to enhance core competencies

Read More >>

Faculty

Faculty members at IIMB generate knowledge through cutting-edge research in all functional areas of management that would benefit public and private sector companies, and government and society in general.

Read More >>

IIMB Management Review

Journal of Indian Institute of Management Bangalore

IIM Bangalore offers Degree-Granting Programmes, a Diploma Programme, Certificate Programmes and Executive Education Programmes and specialised courses in areas such as entrepreneurship and public policy.

Read More >>

About IIMB

The Indian Institute of Management Bangalore (IIMB) believes in building leaders through holistic, transformative and innovative education

Read More >>

Journal Article: A Continuous-Time Analog of the Martingale Model of Forecast Evolution

In many practical situations, a manager would like to simulate forecasts for periods whose duration (e.g., week) is not equal to the periods (e.g., month) for which past forecasting data are available. This article addresses this problem by developing a continuous-time analog of the Martingale model of forecast evolution, called the Continuous-Time Martingale Model of Forecast Evolution (CTMMFE). The CTMMFE is used to parameterize the variance-covariance matrix of forecast updates in such a way that the matrix can be scaled for any planning period length. The parameters can then be estimated from past forecasting data corresponding to a specific planning period. Once the parameters are estimated, a variance-covariance matrix can be generated for any planning period length. Numerical experiments are conducted to derive insights into how various characteristics of the variance-covariance matrix (for example, the underlying correlation structure) influence the number of parameters needed as well as the accuracy of the approximation.

Author’s Name: Amar Sapra and Peter Jackson
Journal Name: IIE Transactions
Year of Publication: 2014
Volume: Vol. 46, Issue 1, 2014, Pg: 23-34
URLhttp://www.tandfonline.com/doi/abs/10.1080/0740817X.2012.761367#.VdwsnuErLcd

Journal Article: A Continuous-Time Analog of the Martingale Model of Forecast Evolution

In many practical situations, a manager would like to simulate forecasts for periods whose duration (e.g., week) is not equal to the periods (e.g., month) for which past forecasting data are available. This article addresses this problem by developing a continuous-time analog of the Martingale model of forecast evolution, called the Continuous-Time Martingale Model of Forecast Evolution (CTMMFE). The CTMMFE is used to parameterize the variance-covariance matrix of forecast updates in such a way that the matrix can be scaled for any planning period length. The parameters can then be estimated from past forecasting data corresponding to a specific planning period. Once the parameters are estimated, a variance-covariance matrix can be generated for any planning period length. Numerical experiments are conducted to derive insights into how various characteristics of the variance-covariance matrix (for example, the underlying correlation structure) influence the number of parameters needed as well as the accuracy of the approximation.

Author’s Name: Amar Sapra and Peter Jackson
Journal Name: IIE Transactions
Year of Publication: 2014
Volume: Vol. 46, Issue 1, 2014, Pg: 23-34
URLhttp://www.tandfonline.com/doi/abs/10.1080/0740817X.2012.761367#.VdwsnuErLcd