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shalini sahni

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Jan 8, 2026, 9:10:23 AM (4 days ago) Jan 8
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Respected Sir and Dear Group members

Koach Scholar is conducting a hands on four-day professional development workshop on "Leveraging Generative AI for teaching, Research and Professional Innovation

Date- 15-20 Jan, 2025 (No session on sat and sun)

Time:  6:30–8:30 PM IST

Sessions will be facilitated by  Dr. Shalini Sahni and Ms. Abhinaya Nair

Key Learnings

Daily Tasks for any professional including educator and researcher

  • Overview of AI and addressing AI Hallucinations
  • Fact checking workflows
  • The CCCTS framework for effective prompts
  • Few-Shot prompting
  • Gen AI’s role in digital strategies, and high volume content creation
  • Mastering AI automation with Zapier (Connect GenAI tools (ChatGPT, Claude, Gemini) with everyday platforms (Google Forms, Sheets, Docs, Gmail)
  • Automated workflows- Anatomy of AI Zap
  • Tools for business and financial investment and Intelligence
  • Human-in-the-Loop (HITL) workflows
For Faculty and Research Scholar
  • Data Scrapping - AI Scrapers
  • Extraction of data using AI
  • Identifying Research Gaps
  • Building frameworks and model
  • Developing Questionnaire and survey google form using AI
  • Systematic Literature Review
  • Bibliometrics using AI tools
  • Text Mining
  • Qualitative & Quantitative Data Analysis


Registration Details:

Registration Fee: INR 1200 / 30 USD

Registration link: https://forms.gle/dM9MmpMp7y5eMtnm8

For Indian Participants
Reg Fee: INR 1200/
Payment link: https://www.koachscholar.com/payment.php
 
For international Participants
Reg Fee : 30 USD

Payment Link:
https://www.paypal.com/ncp/payment/HVQ796MS8GRHQ

Takeaways

  • Recordings
  • Certificates
  • Scripts wherever applicable

For any query, please contact at +91-8178627309

Regards
Team Koach

Koach_Gen AI Automation and Research.pdf

Priyanka Tagra

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Jan 9, 2026, 11:02:17 PM (2 days ago) Jan 9
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Hello everyone,
Is there someone in this group who provide professionally language editing services ? Actually I need it urgently because journal is asking again and again in every revision to do professional language editing.
Thankyou
Research Scholar
Priyanka 

Sukhmani Singh

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Jan 10, 2026, 7:57:51 AM (2 days ago) Jan 10
to DataAnalysis
Dear Priyanka,

You can send your document to the following email address, as I offer proofreading services to scholars.
Rest, converse with me via email instead of this group.
Best wishes.

Dr. Sukhmani
Proofreader, Founder, and Mentor
www.scholars-help.com
YouTube Channel: https://www.youtube.com/@Scholars-Help_dr.sukhmani

Sukhmani Singh

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Jan 10, 2026, 8:00:13 AM (2 days ago) Jan 10
to DataAnalysis
Apologies for skipping email id in first message, now added.
Dr. Sukhmani
Proofreader, Founder, and Mentor
www.scholars-help.com
Email: ad...@scholars-help.com
YouTube Channel: https://www.youtube.com/@Scholars-Help_dr.sukhmani

Ashraf Abdou

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Jan 11, 2026, 8:41:40 AM (19 hours ago) Jan 11
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Dear Team,

I have comment from reviewer told me, :The study demonstrates methodological rigor, a clear empirical contribution, and contextual relevance. However, the manuscript currently exhibits conceptual redundancies, over-extended hypothesis structure, and weaknesses in theoretical parsimony, which limit its impact and clarity.

What I can do, separate main hypothesis than sub diminsion factots. I need your recommendation please. This is  example likey my model. 



My suggestion is to 

Here is the brief English explanation of the Q1-correct approach:
Q1-Correct Hypothesis Structure
You should use only two levels:
Level 1 – Main Hypotheses (formal, numbered)
Test only the core causal model:
TOE → Trust → Intention
Example:
H1: Technological factors → Trust
H2: Organizational factors → Trust
H3: Environmental factors → Trust
H4: Trust → Intention
These are the only hypotheses that should be statistically tested and reported as supported / not supported.
Level 2 – Sub-dimensions (not hypotheses)
Sub-dimensions (e.g., relative advantage, top management support, perceived risk, regulation, etc.) should:
NOT be written as H1a, H1b, H2a…
NOT be part of the formal hypothesis structure
Be used only as explanatory drivers inside:
Measurement model
Results (diagnostic tables)
Discussion
They explain why a main hypothesis is supported or not, but they are not theory-testing units.
How to report results
You report:
TOE → Trust → Intention as supported / not supported
Then you explain:
“At the sub-dimension level, top management support was significant, while technological complexity was not…”
This keeps the model:
Theoretically clean
Statistically valid
Acceptable 

 value will be 
:
Parsimony (simple theory)
Strong causal logic
No hypothesis inflation

..

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Neeraj Kaushik

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Jan 11, 2026, 10:25:43 PM (5 hours ago) Jan 11
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Dear Ashraf
Hypotheses should only be formed between second-order constructs. Where possible, create mediated hypotheses; for example: Perch trust mediated the relationship between Technology and Intention to use. This will significantly reduce the number of hypotheses.
Best wishes
Neeraj

--
The members of this group are expected to follow the following Protocols:
1. Please search previous posts in the group before posting the question.
2. Don't write the query in someone's post. Always use the option of New topic for the new question. You can do this by writing to dataanaly...@googlegroups.com
3. It’s better to give a proper subject to your post/query. It'll help others while searching.
4. Never write Open-ended queries. This group intends to help research scholars, NOT TO WORK FOR THEM.
5. Never write words like URGENT in your posts. People will help when they are free.
6. Never upload any information about National Seminars/Conferences. Send such information
in personal emails and feel free to share any RESEARCH-related information.
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Ashraf Abdou

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Jan 11, 2026, 11:10:17 PM (4 hours ago) Jan 11
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The table below includes all hypotheses. I suggest removing the sub-hypotheses that fall under the main hypothesis, converting them into sub-dimensions, conducting measurement analysis, and determining their significant effects.  What do you think? Is that statistically true? To avoid hypothesis inflation and theoretical redundancy, hypotheses were formulated at the TOE construct level, while sub-construct effects were analyzed as part of the measurement model.


🟦 Table 1. Structural Model Results (TOE-level hypotheses)

HStructural Pathβt-valuep-value95% CI (LB, UB)Result
H1Technology → Intention to use0.5987.7950.000(0.467, 0.767)Supported
H2Technology → Perceived trust0.1140.7260.468(-0.298, 0.118)Not Supported
H3Organization → Intention to use-0.0780.7260.468(-0.298, 0.118)Not Supported
H4Environment → Intention to use-0.0170.1910.849(-0.181, 0.174)Not Supported
H5Perceived trust → Intention to use0.2182.2580.024(0.027, 0.396)Supported
H8Technology → Perceived Trust → Intention to use0.0401.2840.199(-0.006, 0.113)Not Supported
H9Organization → Perceived Trust → Intention to use0.2022.0200.044(0.028, 0.253)Supported
H10Environment → Perceived Trust → Intention to use0.3413.4170.001(0.088, 0.290)Supported

In this case, if any hypothesis is not supported, you must explain why.

🟨 Table 2. Sub-dimension (Micro-level) Effects (Reported separately; not hypotheses)

A) Technological sub-dimensions

Sub-pathβt-valuep-value95% CI (LB, UB)Result
Relative advantage → Perceived trust0.0670.6860.494(-0.281, 0.102)Not Supported
Relative advantage → Intention to use0.5535.5560.000(0.337, 0.741)Supported
Security and privacy → Perceived trust0.1962.6340.009(0.061, 0.351)Supported
Security and privacy → Intention to use0.1351.3170.188(-0.061, 0.343)Not Supported
Perceived complexity → Perceived trust-0.0970.8820.378(-0.297, 0.121)Not Supported
Perceived complexity → Intention to use-0.2382.2770.023(-0.480, -0.061)Supported

B) Organizational sub-dimensions

Sub-pathβt-valuep-value95% CI (LB, UB)Result
Perceived risk → Perceived trust-0.1751.6680.095(-0.027, 0.384)Not Supported
Perceived risk → Intention to use-0.2972.6660.008(0.112, 0.540)Supported
Top management support → Perceived trust0.2343.5050.000(0.083, 0.352)Supported
Top management support → Intention to use0.1020.8890.374(-0.142, 0.316)Not Supported
Hospital readiness → Perceived trust0.1352.4370.021(0.047, 0.320)Supported
Hospital readiness → Intention to use0.1171.1610.246(-0.299, 0.104)Not Supported


C) Environmental sub-dimensions

Sub-pathβt-valuep-value95% CI (LB, UB)Result
Financial capabilities → Perceived trust0.3734.3090.000(0.168, 0.527)Supported
Financial capabilities → Intention to use0.2071.9580.046(0.019, 0.430)Supported
Government support and regulations → Perceived trust0.1992.3210.020(0.044, 0.377)Supported
Government support and regulations → Intention to use0.1271.4400.150(-0.305, 0.039)Not Supported

and explain just significant sub-dimension factors in this case



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