Processing, Please wait...

  • Home
  • About Us
  • 📺 Tutorial
  • Search:
  • Advanced Search

Growing Science » Authors » Rommel AlAli

📚 Highly Cited Articles

  • Jaya Algorithm
  • Rao Algorithm
  • TLBO Algorithm
  • Discrete Firefly
  • ChatGPT and Blended Learning

Journals

  • IJIEC (777)
  • MSL (2643)
  • DSL (690)
  • CCL (528)
  • USCM (1099)
  • ESM (428)
  • AC (562)
  • JPM (293)
  • IJDS (952)
  • JFS (101)
  • HE (37)
  • SCI (41)

🔑 Keywords

Supply chain management(168)
Jordan(165)
Vietnam(151)
Customer satisfaction(120)
Performance(115)
Supply chain(112)
Service quality(98)
Competitive advantage(97)
Tehran Stock Exchange(94)
SMEs(89)
Sustainability(88)
Artificial intelligence(88)
optimization(87)
Financial performance(84)
Trust(83)
TOPSIS(83)
Job satisfaction(81)
Knowledge Management(79)
Factor analysis(78)
Social media(78)


» Show all keywords

✍️ Authors

Naser Azad(82)
Zeplin Jiwa Husada Tarigan(66)
Mohammad Reza Iravani(64)
Endri Endri(45)
Muhammad Alshurideh(42)
Hotlan Siagian(40)
Dmaithan Almajali(37)
Jumadil Saputra(36)
Muhammad Turki Alshurideh(35)
Ahmad Makui(33)
Barween Al Kurdi(32)
Hassan Ghodrati(31)
Basrowi Basrowi(31)
Sautma Ronni Basana(31)
Mohammad Khodaei Valahzaghard(30)
Shankar Chakraborty(29)
Ni Nyoman Kerti Yasa(29)
Haitham M. Alzoubi(28)
Sulieman Ibraheem Shelash Al-Hawary(28)
Prasadja Ricardianto(28)


» Show all authors

🌍 Countries

Iran(2198)
Indonesia(1311)
Jordan(815)
India(798)
Vietnam(510)
Saudi Arabia(479)
Malaysia(449)
China(231)
United Arab Emirates(229)
Thailand(160)
United States(116)
Turkey(114)
Ukraine(110)
Egypt(106)
Peru(94)
Canada(93)
Morocco(87)
Pakistan(85)
United Kingdom(80)
Nigeria(78)


» Show all countries
Sort articles by: Volume | Date | Most Rates | Most Views | Reviews | Alphabet
1.

An improved multi-stage framework for large-scale hierarchical text classification problems using a modified feature hashing and bi-filtering strategy Pages 2193-2204 Right click to download the paper Download PDF

Authors: Abubakar Ado, Abdulkadir Abubakar Bichi, Usman Haruna, Mohammed Almaiah, Yahaya Garba Shawai, Rommel AlAli, Tayseer Alkhdour, Theyazn H.H Aldhyani, Mahmoad Al-rawad, Rami Shehab

doi 10.5267/j.ijdns.2024.6.012 Crossmark

Keywords: Hierarchical Classification, Dimensional Reduction, Feature Hashing, Large-scale, Bi-filtering

Abstract:
The classification of large-scale textual dataset is associated with a huge number of instances and millions of features which must be discriminated between large numbers of categories. The task requires the utilization of a defined hierarchy structure and tools that automatically classify instances within the hierarchy known as Large Scale Hierarchical Text Classification (LSHTC). Predicting the labels of instances by the employed classifiers is challenging due to the high number of features. Furthermore, the existing Dimensional Reduction (DR) approaches in cooperation with the LSHTC framework are still quite inefficient. In such a problem, an effective Hierarchical Dimensional Reduction approach can be advantageous in improving the performance of the LSHTC. Therefore, in this paper, we enhance the performance of LSHTC by proposing a Multi-stage Hierarchical Dimensional Reduction (MHDR) approach based on Modified Feature Hashing (MFH) and Hierarchical Bi-Filtering (HBF) method. In addition to alleviating bad collision and result discrepancy, experimental results show that the proposed approach has achieve the best performance in terms of micro-f1 and macro-f1 by recording average scores of 58.47% and 54.77% using TD-SVM, and average scores of 51.14% and 48.70% using TD-LR, respectively. The method also achieved 11% speed-up than the approaches compared.
Details
  • 34
  • 1
  • 2
  • 3
  • 4
  • 5

Journal: IJDS | Year: 2024 | Volume: 8 | Issue: 4 | Views: 671 | Reviews: 0

 
2.

Streamlining supply chains: An efficiency-driven permissioned blockchain framework for data reduction Pages 2445-2458 Right click to download the paper Download PDF

Authors: Mohammed Amin Almaiah, Aitizaz Ali, Tayseer Alkhdour, Ting Tin Tin, Rommel AlAli, Theyazan Aldahyani

doi 10.5267/j.ijdns.2024.5.013 Crossmark

Keywords: Supply Chains, Efficiency, Permissioned Blockchain, Framework, Data Reduction, Supply Chain Optimization, Blockchain Technology

Abstract:
In the ever-evolving landscape of supply chain management, the quest for efficiency has become paramount. This abstract explores a groundbreaking solution that combines the power of permissioned blockchain technology with innovative data reduction strategies to redefine how supply chains operate. Traditional supply chain systems often grapple with data overload, causing delays, inaccuracies, and operational inefficiencies. However, this abstract presents a promising approach that unleashes efficiency by harnessing the capabilities of a permissioned blockchain. Through data reduction techniques tailored to the needs of supply chain management, this approach streamlines the flow of information while maintaining security and trust among participants. This paper seeks into the technical foundations of permissioned blockchains, highlighting their suitability for supply applications where confidentiality and controlled access are imperative. Furthermore, it examines various data reduction methodologies, emphasizing their role in minimizing redundant data, optimizing communication, and enabling real-time decision-making. The impact of this innovative approach on supply chain stakeholders is profound. It reduces data related bottlenecks, enhances transparencies, and fosters collaboration among participants. Additionally, it provides a scalable framework adaptable to diverse supply chain ecosystems. As supply chain efficiency becomes increasingly important in our interconnected world, this permissioned blockchain-driven data reduction strategy offers a compelling vision for the future. It promises to unlock a new era of streamlined operations, cost savings, and improved customer satisfaction, ultimately shaping the next generation of supply chain management.
Details
  • 0
  • 1
  • 2
  • 3
  • 4
  • 5

Journal: IJDS | Year: 2024 | Volume: 8 | Issue: 4 | Views: 657 | Reviews: 0

 

® 2010-2026 GrowingScience.Com