Exploiting Big Data in Logistics Risk Assessment via Bayesian Nonparametrics

dc.contributor.advisor

Dunson, David B

dc.contributor.author

Shang, Yan

dc.date.accessioned

2015-01-28T18:11:14Z

dc.date.available

2015-01-28T18:11:14Z

dc.date.issued

2014

dc.department

Statistical Science

dc.description.abstract

In cargo logistics, a key performance measure is transport risk, defined as the deviation of the actual arrival time from the planned arrival time. Neither earliness nor tardiness is desirable for the customer and freight forwarder. In this paper, we investigate ways to assess and forecast transport risks using a half-year of air cargo data, provided by a leading forwarder on 1336 routes served by 20 airlines. Interestingly, our preliminary data analysis shows a strong multimodal feature in the transport risks, driven by unobserved events, such as cargo missing flights. To accommodate this feature, we introduce a Bayesian nonparametric model -- the probit stick-breaking process (PSBP) mixture model -- for flexible estimation of the conditional (i.e., state-dependent) density function of transport risk. We demonstrate that using simpler methods, such as OLS linear regression, can lead to misleading inferences. Our model provides a tool for the forwarder to offer customized price and service quotes. It can also generate baseline airline performance to enable fair supplier evaluation. Furthermore, the method allows us to separate recurrent risks from disruption risks. This is important, because hedging strategies for these two kinds of risks are often drastically different.

dc.identifier.uri

https://hdl.handle.net/10161/9449

dc.subject

Statistics

dc.subject

Transportation planning

dc.subject

Business

dc.subject

Bayesian statistics

dc.subject

Big data

dc.subject

disruptions and risks

dc.subject

empirical

dc.subject

Nonparametric

dc.subject

probit stick-breaking mixture model

dc.title

Exploiting Big Data in Logistics Risk Assessment via Bayesian Nonparametrics

dc.type

Master's thesis

Files

Original bundle

Now showing 1 - 1 of 1
Loading...
Thumbnail Image
Name:
Shang_duke_0066N_12669.pdf
Size:
1.25 MB
Format:
Adobe Portable Document Format

Collections