Should Shippers Be Afraid of Ghost Freight? An Empirical Analysis of a Customer Portfolio from TMC, a Div. of C.H. Robinson

Over the past several years, there has been severe market volatility in the truckload industry leading to cost increases and efficiency losses for shippers and carriers. Previous research has investigated the many factors that contribute to such market conditions. One topic that has yet to be analyz...

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Main Authors: Liu, Yu Xuan, Miller, Alexander Clayton
Format: Other
Language:en_US
Published: 2021
Subjects:
Online Access:https://hdl.handle.net/1721.1/130955
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author Liu, Yu Xuan
Miller, Alexander Clayton
author_facet Liu, Yu Xuan
Miller, Alexander Clayton
author_sort Liu, Yu Xuan
collection MIT
description Over the past several years, there has been severe market volatility in the truckload industry leading to cost increases and efficiency losses for shippers and carriers. Previous research has investigated the many factors that contribute to such market conditions. One topic that has yet to be analyzed is “ghost freight.” Ghost freight occurs either when no volume materializes on a lane (origin-destination pair) that was previously awarded to one or more primary carriers (a “full ghost” lane), or when the shipper tenders to only a subset of awarded primary carriers (a “partial ghost” lane). Our research leveraged five years of truckload market transactions for 15 shippers and over 300 carriers to conduct our analysis. We utilized Python and Tableau to identify and visualize the frequency of ghost freight across the market along with the types of lanes that tend to become ghost lanes. In addition, Ordinary Least Squares (OLS) regression was used to determine the impact of ghost freight on carrier performance. This research found that both full and partial ghost lanes occur very frequently in general each year, however there is a lack of pattern with respect to individual shipper behavior. The regression models did not show a clear impact of ghost freight on acceptance rates or prices. This may be the case in part because full ghost freight occurs overwhelmingly on low-volume lanes, which are traditionally not a capacity planning priority. That being said, we found that partial ghost lanes tend to occur on lanes that are often medium-to-high volume. This finding may be a topic of interest for carriers for future capacity planning. Further, although shippers do not appear to face direct financial repercussions resulting from carriers, it is ultimately inefficient to spend time and money awarding lanes that are never tendered to.
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spelling mit-1721.1/1309552021-06-17T03:02:53Z Should Shippers Be Afraid of Ghost Freight? An Empirical Analysis of a Customer Portfolio from TMC, a Div. of C.H. Robinson Liu, Yu Xuan Miller, Alexander Clayton Demand Planning Machine Learning Transportation Over the past several years, there has been severe market volatility in the truckload industry leading to cost increases and efficiency losses for shippers and carriers. Previous research has investigated the many factors that contribute to such market conditions. One topic that has yet to be analyzed is “ghost freight.” Ghost freight occurs either when no volume materializes on a lane (origin-destination pair) that was previously awarded to one or more primary carriers (a “full ghost” lane), or when the shipper tenders to only a subset of awarded primary carriers (a “partial ghost” lane). Our research leveraged five years of truckload market transactions for 15 shippers and over 300 carriers to conduct our analysis. We utilized Python and Tableau to identify and visualize the frequency of ghost freight across the market along with the types of lanes that tend to become ghost lanes. In addition, Ordinary Least Squares (OLS) regression was used to determine the impact of ghost freight on carrier performance. This research found that both full and partial ghost lanes occur very frequently in general each year, however there is a lack of pattern with respect to individual shipper behavior. The regression models did not show a clear impact of ghost freight on acceptance rates or prices. This may be the case in part because full ghost freight occurs overwhelmingly on low-volume lanes, which are traditionally not a capacity planning priority. That being said, we found that partial ghost lanes tend to occur on lanes that are often medium-to-high volume. This finding may be a topic of interest for carriers for future capacity planning. Further, although shippers do not appear to face direct financial repercussions resulting from carriers, it is ultimately inefficient to spend time and money awarding lanes that are never tendered to. 2021-06-16T16:34:04Z 2021-06-16T16:34:04Z 2021-06-16 Other https://hdl.handle.net/1721.1/130955 en_US CC0 1.0 Universal http://creativecommons.org/publicdomain/zero/1.0/ application/pdf
spellingShingle Demand Planning
Machine Learning
Transportation
Liu, Yu Xuan
Miller, Alexander Clayton
Should Shippers Be Afraid of Ghost Freight? An Empirical Analysis of a Customer Portfolio from TMC, a Div. of C.H. Robinson
title Should Shippers Be Afraid of Ghost Freight? An Empirical Analysis of a Customer Portfolio from TMC, a Div. of C.H. Robinson
title_full Should Shippers Be Afraid of Ghost Freight? An Empirical Analysis of a Customer Portfolio from TMC, a Div. of C.H. Robinson
title_fullStr Should Shippers Be Afraid of Ghost Freight? An Empirical Analysis of a Customer Portfolio from TMC, a Div. of C.H. Robinson
title_full_unstemmed Should Shippers Be Afraid of Ghost Freight? An Empirical Analysis of a Customer Portfolio from TMC, a Div. of C.H. Robinson
title_short Should Shippers Be Afraid of Ghost Freight? An Empirical Analysis of a Customer Portfolio from TMC, a Div. of C.H. Robinson
title_sort should shippers be afraid of ghost freight an empirical analysis of a customer portfolio from tmc a div of c h robinson
topic Demand Planning
Machine Learning
Transportation
url https://hdl.handle.net/1721.1/130955
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