Newbuilding ship price forecasting by parsimonious intelligent model search engine
Newbuilding ship price forecasting by parsimonious intelligent model search engine
Asset prices play a significant role in the financial survival and profitability of ship-owning firms. In a highly volatile shipping market, prices of newbuilding ships must be predicted to detect security shortfalls as well as opportunities for temporal arbitration (gaining on high–low pricing). Accordingly, this paper proposes an improved version of the intelligent model search engine (IMSE) by asynchronous time lag selection. The parsimonious IMSE algorithm comprises the essential components such as input and training data size selection by a grid search procedure. In the initial IMSE algorithm, time-lag (memory size) selection is designed such that a serial cluster of memory groups is assigned synchronously for all inputs. By relaxing of lag structures selection, the proposed algorithm estimates unique lead–lag relations for the input of the intended problem set. An extensive benchmark study with several baseline models and the persistence forecast (Naïve I) is performed to observe the out-of-sample accuracy of the proposed approach. The empirical results indicate that second-hand ship prices, scrap values, and orderbook (no. of orders) have predictive features and are selected by the search engine for two ship sizes. Different lag structures are estimated for each input with asynchronous time-lag selection improvement.
Forecasting, Grid search algorithm, Machine learning, Shipping market
Gao, Ruobin
0ccb66e0-4b50-442c-8619-620469b4974b
Liu, Jiahui
2245f256-5790-44e8-99a7-dd1547f8c33a
Zhou, Qin
22cc3c1b-50f4-41e0-9c3e-8cdf183a022e
Duru, Okan
242b2f03-eb1e-4a61-a936-fbb2623705a3
Yuen, Kum Fai
5acba8bd-2837-4913-8ec8-5b9b98cb04b9
1 September 2022
Gao, Ruobin
0ccb66e0-4b50-442c-8619-620469b4974b
Liu, Jiahui
2245f256-5790-44e8-99a7-dd1547f8c33a
Zhou, Qin
22cc3c1b-50f4-41e0-9c3e-8cdf183a022e
Duru, Okan
242b2f03-eb1e-4a61-a936-fbb2623705a3
Yuen, Kum Fai
5acba8bd-2837-4913-8ec8-5b9b98cb04b9
Gao, Ruobin, Liu, Jiahui, Zhou, Qin, Duru, Okan and Yuen, Kum Fai
(2022)
Newbuilding ship price forecasting by parsimonious intelligent model search engine.
Expert Systems with Applications, 201, [117119].
(doi:10.1016/j.eswa.2022.117119).
Abstract
Asset prices play a significant role in the financial survival and profitability of ship-owning firms. In a highly volatile shipping market, prices of newbuilding ships must be predicted to detect security shortfalls as well as opportunities for temporal arbitration (gaining on high–low pricing). Accordingly, this paper proposes an improved version of the intelligent model search engine (IMSE) by asynchronous time lag selection. The parsimonious IMSE algorithm comprises the essential components such as input and training data size selection by a grid search procedure. In the initial IMSE algorithm, time-lag (memory size) selection is designed such that a serial cluster of memory groups is assigned synchronously for all inputs. By relaxing of lag structures selection, the proposed algorithm estimates unique lead–lag relations for the input of the intended problem set. An extensive benchmark study with several baseline models and the persistence forecast (Naïve I) is performed to observe the out-of-sample accuracy of the proposed approach. The empirical results indicate that second-hand ship prices, scrap values, and orderbook (no. of orders) have predictive features and are selected by the search engine for two ship sizes. Different lag structures are estimated for each input with asynchronous time-lag selection improvement.
Text
Manuscript(accepted version)
- Accepted Manuscript
More information
Accepted/In Press date: 28 March 2022
e-pub ahead of print date: 9 April 2022
Published date: 1 September 2022
Keywords:
Forecasting, Grid search algorithm, Machine learning, Shipping market
Identifiers
Local EPrints ID: 473970
URI: http://eprints.soton.ac.uk/id/eprint/473970
ISSN: 0957-4174
PURE UUID: e7b29407-d39a-44b3-985b-b268831e3580
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Date deposited: 07 Feb 2023 17:31
Last modified: 06 Jun 2024 04:04
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Contributors
Author:
Ruobin Gao
Author:
Jiahui Liu
Author:
Qin Zhou
Author:
Okan Duru
Author:
Kum Fai Yuen
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