Showing 281 - 300 results of 18,361 for search 'significant ((((shape decrease) OR (step decrease))) OR (((a decrease) OR (mean decrease))))', query time: 0.60s Refine Results
  1. 281
  2. 282

    Table 1_Effect of decreased suspended sediment content on chlorophyll-a in Dongting Lake, China.docx by Le Zhang (88249)

    Published 2025
    “…Additionally, a significant correlation between Chl-a concentration and SSC was found. …”
  3. 283
  4. 284
  5. 285
  6. 286

    S1 Data - by Kazuyoshi Ohkawa (836847)

    Published 2024
    Subjects:
  7. 287
  8. 288
  9. 289
  10. 290
  11. 291

    Results of normal and wide step width (cm). by Fateme Khorramroo (18086501)

    Published 2025
    “…These results should be considered when using a wide step width as a gait retraining method for managing flat-footed individuals.…”
  12. 292

    Comprehensive prediction process of shape errors. by Zhe Hu (787283)

    Published 2025
    “…Following model updates with measured data, the accumulated prediction error rapidly decreases. The proposed prediction method for shape errors during pushing exhibits high accuracy and versatility in similar projects, significantly reducing time spent on manual error handling and minimizing computational inaccuracies.…”
  13. 293

    Shape error manual calculation process. by Zhe Hu (787283)

    Published 2025
    “…Following model updates with measured data, the accumulated prediction error rapidly decreases. The proposed prediction method for shape errors during pushing exhibits high accuracy and versatility in similar projects, significantly reducing time spent on manual error handling and minimizing computational inaccuracies.…”
  14. 294

    Shape error measurement results statistics. by Zhe Hu (787283)

    Published 2025
    “…Following model updates with measured data, the accumulated prediction error rapidly decreases. The proposed prediction method for shape errors during pushing exhibits high accuracy and versatility in similar projects, significantly reducing time spent on manual error handling and minimizing computational inaccuracies.…”
  15. 295
  16. 296

    Marginal means – Pooled across scenarios. by Mehdi Mourali (10170245)

    Published 2025
    “…When are individuals more likely to support equal treatment algorithms (ETAs), characterized by higher predictive accuracy, and when do they prefer equal impact algorithms (EIAs) that reduce performance gaps between groups? A randomized conjoint experiment and a follow-up choice experiment revealed that support for the EIAs decreased sharply as their accuracy gap grew, although impact parity was prioritized more when ETAs produced large outcome discrepancies. …”
  17. 297
  18. 298
  19. 299
  20. 300