| Literature DB >> 33265807 |
Hao Liao1, Xiao-Min Huang1, Alexandre Vidmer1, Yi-Cheng Zhang1,2, Ming-Yang Zhou1.
Abstract
The Belt and Road initiative (BRI) was announced in 2013 by the Chinese government. Its goal is to promote the cooperation between European and Asian countries, as well as enhancing the trust between members and unifying the market. Since its creation, more and more developing countries are joining the initiative. Based on the geographical location characteristics of the countries in this initiative, we propose an improvement of a popular recommendation algorithm that includes geographic location information. This recommendation algorithm is able to make suitable recommendations of products for countries in the BRI. Then, Fitness and Complexity metrics are used to evaluate the impact of the recommendation results and measure the country's competitiveness. The aim of this work is to provide countries' insights on the ideal development direction. By following the recommendations, the countries can quickly increase their international competitiveness.Entities:
Keywords: economic complexity metrics; recommendation algorithm; the Belt and Road initiative
Year: 2018 PMID: 33265807 PMCID: PMC7513244 DOI: 10.3390/e20090718
Source DB: PubMed Journal: Entropy (Basel) ISSN: 1099-4300 Impact factor: 2.524
A comparison of the precision and recall of the three algorithms. The parameters for Preferential diffusion and Geography algorithms are the one maximizing Precision and Recall. The bold data means the best performance in these set of methods.
| Algorithm |
| P(20) | R(20) |
|---|---|---|---|
| ProbS | - |
| 0.094 |
| HeatS | - | 0.063 | 0.095 |
| TprobS | - | 0.067 |
|
| THybridS | - | 0.066 | 0.095 |
| PD-ProbS | 2.20 |
|
|
| PD-HeatS | 2.10 | 0.065 | 0.099 |
| PD-TprobS | 1.80 | 0.070 | 0.098 |
| PD-THybridS | 3.90 | 0.072 | 0.104 |
| Geo-ProbS | −1.90 |
| 0.106 |
| Geo-HeatS | −0.50 | 0.067 | 0.100 |
| Geo-TprobS | −2.00 | 0.074 | 0.104 |
| Geo-THybridS | −1.80 |
|
|
Figure 1(a,b) show the precision and recall with varying parameter and of PD-THybridS. Similarly, the precision and recall of Geo-THybridS are show in the panel (c) and panel (d).
Figure 2(a) shows the evolution of the network size from 2001 to 2015; (b) is the relationship between Δlinks of country and the Δfitness value of country. Each dot represents a specific country.
Figure 3The relationship between the countries’ fitness rank and its average rank complexity of the top 20 recommended commodities. means that the length of the recommendation list is set to 20. The complexity is the average of items’ complexity in the Geo-THybridS recommendation list. Each dot represents a specific country.
A presentation about the most recommended products in different regions.
| Country | Recommended Products |
|---|---|
| 1 country of East Asia | Tugs, special purpose vessels and floating structures |
| Oil seeds and oleaginous fruits | |
| Sheep and lamb skin without the wool, raw | |
| Yarn of regenerated fibres, put up for retail sale | |
| Imitation jewellery | |
| 10 countries of ASEAN | Crystals, and parts of electronic components |
| Base metals and cermets, unwrought | |
| Sheep and lamb skin with the wool on | |
| Ores and concentrates of other non-ferrous base metals | |
| Briquettes, ovoids, from coal, lignite or peat | |
| 18 countries of West Asia | Chemical elements |
| Poultry, live | |
| Groundnut (peanut) oil | |
| Discontinuous synthetic fibres | |
| Refined sugar etc | |
| 8 countries of South Asia | Natural honey |
| Sawlogs and veneer logs, of non-coniferous species | |
| Cotton linters | |
| Distilled alcoholic beverages | |
| cellulosic pulps | |
| 5 countries of Central Asia | Wood packing cases, boxes, cases, crates, etc., complete |
| Builders’ carpentry and joinery (including prefabricated) | |
| Fabrics woven of sheep’s or lambs’ wool or of fine hair | |
| Glass, etc, surface-ground, but no further worked | |
| Railway or tramway sleepers (ties) of wood | |
| 7 countries of CIS | Copper ore and concentrates; copper matte; cement copper |
| Other natural abrasives | |
| Cigarettes | |
| Animals oils, fats and greases | |
| Vegetable textile fibres | |
| 16 countries of Central and Eastern Europe | Tugs, special purpose vessels and floating structures |
| Parts of and accessories for musical instruments; metronomes | |
| Anti-knock preparation, anti-corrosive; viscosity improvers | |
| Batteries and electric accumulators, and parts thereof | |
| Precious and semi-precious stones, not mounted, set or strung |
Figure 4(a–f) shows the evolution of fitness values in various regions from 2001 to 2015, respectively. Among them, the fitness value is the average fitness of all countries in the specific region.
Figure 5The distribution of the original fitness value of the country.