| Literature DB >> 36010707 |
Weidong Li1,2, Anjian Wang1,2, Wanli Xing3.
Abstract
The input-output (IO) network is the quantitative description of an IO-based economy in which nodes represent industries and edges connecting nodes represent the economic connection between industries. Robustness refers to the ability of tolerating perturbations that might affect the system's functional body. There is both practical and theoretical significance to explore the robustness of the IO network for economic development. In this paper, we probe the robustness of the Chinese IO network based on the relative entropy of the probability distribution of network parameters (node degree, strongest path betweenness, downstream closeness and upstream closeness) under random node or edge failure and intentional node or edge attack. It is found that the Chinese IO network shows relatively weak robustness when it is under intentional attack, but relatively strong robustness when it is under random failure. Our experiment also verifies the applicability and effectiveness of the relative entropy model in measuring the robustness of the IO network.Entities:
Keywords: degree; input–output network; relative entropy; robustness; strongest path
Year: 2022 PMID: 36010707 PMCID: PMC9407281 DOI: 10.3390/e24081043
Source DB: PubMed Journal: Entropy (Basel) ISSN: 1099-4300 Impact factor: 2.738
Figure 1The Chinese input–output network model in 2018 (size per node indicates the weighted degree and width per edge indicates the edge weight).
List of OECD industries and corresponding abbreviations.
| Serial | ISIC Rev.4 | Industry | Abbreviation |
|---|---|---|---|
| 1 | D01T02 | Agriculture, hunting, forestry | AGR |
| 2 | D03 | Fishing and aquaculture | FA |
| 3 | D05T06 | Mining and quarrying, energy producing products | MQE |
| 4 | D07T08 | Mining and quarrying, non-energy producing products | MQN |
| 5 | D09 | Mining support service activities | MSS |
| 6 | D10T12 | Food products, beverages and tobacco | FBT |
| 7 | D13T15 | Textiles, textile products, leather and footwear | TTP |
| 8 | D16 | Wood and products of wood and cork | WWC |
| 9 | D17T18 | Paper products and printing | PPP |
| 10 | D19 | Coke and refined petroleum products | CRP |
| 11 | D20 | Chemical and chemical products | CCP |
| 12 | D21 | Pharmaceuticals, medicinal chemical and botanical products | PMB |
| 13 | D22 | Rubber and plastics products | RPP |
| 14 | D23 | Other non-metallic mineral products | OMP |
| 15 | D24 | Basic metals | BM |
| 16 | D25 | Fabricated metal products | FMP |
| 17 | D26 | Computer, electronic and optical equipment | CEO |
| 18 | D27 | Electrical equipment | EE |
| 19 | D28 | Machinery and equipment, nec | MAC |
| 20 | D29 | Motor vehicles, trailers and semi-trailers | MTS |
| 21 | D30 | Other transport equipment | OTE |
| 22 | D31T33 | Manufacturing nec; repair and installation of machinery and equipment | MAN |
| 23 | D35 | Electricity, gas, steam and air conditioning supply | EGS |
| 24 | D36T39 | Water supply; sewerage, waste management and remediation activities | WSW |
| 25 | D41T43 | Construction | CON |
| 26 | D45T47 | Wholesale and retail trade; repair of motor vehicles | WRR |
| 27 | D49 | Land transport and transport via pipelines | LR |
| 28 | D50 | Water transport | WR |
| 29 | D51 | Air transport | AR |
| 30 | D52 | Warehousing and support activities for transportation | TS |
| 31 | D53 | Postal and courier activities | PCA |
| 32 | D55T56 | Accommodation and food service activities | AFS |
| 33 | D58T60 | Publishing, audiovisual and broadcasting activities | PAB |
| 34 | D61 | Telecommunications | TEL |
| 35 | D62T63 | IT and other information services | IT |
| 36 | D64T66 | Financial and insurance activities | FIA |
| 37 | D68 | Real estate activities | RS |
| 38 | D69T75 | Professional, scientific and technical activities | PST |
| 39 | D77T82 | Administrative and support services | ASS |
| 40 | D84 | Public administration and defence; compulsory social security | PD |
| 41 | D85 | Education | EDU |
| 42 | D86T88 | Human health and social work activities | HS |
| 43 | D90T93 | Arts, entertainment and recreation | AER |
| 44 | D94T96 | Other service activities | OS |
| 45 | D97T98 | Activities of households as employers; undifferentiated goods- and services-producing activities of households for own use | HOU |
Relevant parameters (node degree, SP betweenness, downstream closeness and upstream closeness) in the Chinese input–output network.
| Serial Number | Industrial Abbreviation | Weighted Degree | SP Betweenness | Downstream Closeness | Upstream Closeness |
|---|---|---|---|---|---|
| 1 | AGR | 2,562,629 | 92,472 | 26,293 | 16,338 |
| 2 | FA | 256,312 | 2461 | 3340 | 2338 |
| 3 | MQE | 1,339,448 | 245,831 | 24,536 | 7366 |
| 4 | MQN | 587,029 | 8003 | 10,456 | 4708 |
| 5 | MSS | 49,156 | 0 | 1724 | 505 |
| 6 | FBT | 2,255,791 | 131,243 | 15,269 | 25,130 |
| 7 | TTP | 2,297,492 | 711 | 6788 | 12,821 |
| 8 | WWC | 415,010 | 2724 | 4125 | 2791 |
| 9 | PPP | 789,608 | 7407 | 7092 | 4918 |
| 10 | CRP | 1,069,326 | 152,486 | 14,323 | 13,828 |
| 11 | CCP | 2,283,824 | 85,214 | 23,024 | 13,646 |
| 12 | PMB | 517,523 | 26,165 | 3523 | 4108 |
| 13 | RPP | 969,176 | 19,281 | 9262 | 8350 |
| 14 | OMP | 1,713,398 | 89,729 | 18,940 | 11,706 |
| 15 | BM | 3,072,146 | 185,195 | 30,339 | 18,371 |
| 16 | FMP | 1,142,253 | 13,689 | 11,234 | 11,366 |
| 17 | CEO | 2,471,357 | 3147 | 8713 | 14,210 |
| 18 | EE | 1,301,461 | 23,716 | 10,668 | 14,316 |
| 19 | MAC | 1,578,061 | 7072 | 9637 | 17,375 |
| 20 | MTS | 1,596,877 | 16,268 | 6142 | 12,870 |
| 21 | OTE | 256,789 | 4996 | 1272 | 3352 |
| 22 | MAN | 392,986 | 9027 | 2860 | 5779 |
| 23 | EGS | 1,443,474 | 21,102 | 13,240 | 11,682 |
| 24 | WSW | 257,270 | 211 | 2869 | 2204 |
| 25 | CON | 2,516,932 | 4015 | 676 | 55,852 |
| 26 | WRR | 2,082,205 | 65,849 | 31,445 | 16,458 |
| 27 | LR | 1,171,919 | 64,100 | 15,539 | 11,879 |
| 28 | WR | 206,296 | 2067 | 2490 | 2408 |
| 29 | AR | 204,366 | 1227 | 2582 | 1987 |
| 30 | TS | 258,371 | 0 | 3526 | 2831 |
| 31 | PCA | 165,302 | 127 | 2257 | 1390 |
| 32 | AFS | 708,324 | 40,696 | 7459 | 9312 |
| 33 | PAB | 70,715 | 0 | 606 | 981 |
| 34 | TEL | 299,942 | 0 | 2722 | 2831 |
| 35 | IT | 277,840 | 0 | 2850 | 2721 |
| 36 | FIA | 998,099 | 4019 | 18,777 | 3434 |
| 37 | RS | 489,535 | 82 | 7268 | 4375 |
| 38 | PST | 911,260 | 3791 | 11,206 | 8695 |
| 39 | ASS | 1,190,835 | 6898 | 14,674 | 10,311 |
| 40 | PD | 282,407 | 0 | 251 | 6113 |
| 41 | EDU | 170,692 | 0 | 357 | 3498 |
| 42 | HS | 177,786 | 354 | 192 | 4433 |
| 43 | AER | 79,489 | 0 | 410 | 994 |
| 44 | OS | 176,348 | 0 | 1752 | 2129 |
Figure 2The original probability distribution of (a) node degree, (b) SP betweenness, (c) downstream closeness and (d) upstream closeness.
Figure 3The changing situation of entropy under node random failure and intentional attack according to (a) node degree, (b) SP betweenness, (c) downstream closeness and (d) upstream closeness.
Figure 4The changing situation of entropy under edge random failure and intentional attack according to (a) node degree, (b) SP betweenness, (c) downstream closeness and (d) upstream closeness.As can be seen from Figure 4a, the relative entropy of node degree distribution of the Chinese input–output network gradually increases slowly at first and quickly afterwards, with an increase in the proportion of edges under random failure and intentional attack. Overall, the relative entropy of node degree distribution under intentional edge attack is slightly larger than under random edge attack, except when the 1300th–1600th edges are under attack, indicating that an intentional edge attack on the node degree of the Chinese input–output network may make an even stronger impact than random edge failure.