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  <title>DSpace Collection:</title>
  <link rel="alternate" href="http://10.9.150.37:8080/dspace//handle/atmiyauni/2056" />
  <subtitle />
  <id>http://10.9.150.37:8080/dspace//handle/atmiyauni/2056</id>
  <updated>2026-04-27T20:08:14Z</updated>
  <dc:date>2026-04-27T20:08:14Z</dc:date>
  <entry>
    <title>An Algorithmic Approach for Undergraduate Computer Science Students to Select Mentor Using Recommendation System of Machine Learning</title>
    <link rel="alternate" href="http://10.9.150.37:8080/dspace//handle/atmiyauni/2330" />
    <author>
      <name>Dave, Nehal Kiritkumar</name>
    </author>
    <author>
      <name>Dr. Hiren, R. Kavathiya</name>
    </author>
    <id>http://10.9.150.37:8080/dspace//handle/atmiyauni/2330</id>
    <updated>2025-09-04T07:38:25Z</updated>
    <published>2025-06-01T00:00:00Z</published>
    <summary type="text">Title: An Algorithmic Approach for Undergraduate Computer Science Students to Select Mentor Using Recommendation System of Machine Learning
Authors: Dave, Nehal Kiritkumar; Dr. Hiren, R. Kavathiya
Abstract: Undergraduate students' intellectual and emotional health are significantly impacted by&#xD;
mentoring. Having the proper mentor can have a big impact on confidence, motivation, and&#xD;
long-term goal setting for computer science students, who frequently deal with high levels of&#xD;
academic pressure and ambiguity about their career trajectory. Nevertheless, conventional&#xD;
mentor selection techniques fail to consider students' psychological fit with mentors, which&#xD;
frequently leads to unproductive or brief mentor-mentee relationships. By using a machine&#xD;
learning-based recommendation system that takes psychological characteristics into account&#xD;
when choosing mentors, this study seeks to close that gap.&#xD;
Using well-known models like the Big Five Personality Traits and emotional intelligence&#xD;
scores, the suggested system integrates psychological profiling. In addition to academic and&#xD;
technical interests, mentors and students are assessed on their motivational tendencies,&#xD;
communication preferences, and interpersonal styles. The methodology guarantees improved&#xD;
emotional alignment and communicative resonance between the mentor and mentee by&#xD;
including psychological elements in addition to scholastic data.&#xD;
The model was constructed and trained using machine learning strategies, such as collaborative&#xD;
filtering and clustering. A psychological compatibility score was incorporated into the&#xD;
recommendation algorithm, and participant surveys and psychometric testing were used to&#xD;
create a rich dataset. According to tests, students who were paired with mentors based on&#xD;
psychological compatibility expressed greater levels of happiness as well as a more robust&#xD;
sense of belonging and support.&#xD;
The study also looked at the relationship between mentor-mentee psychological compatibility&#xD;
and stress levels, academic engagement, and self-efficacy. Pupils who had mentors who shared&#xD;
their psychological views demonstrated better coping strategies, more academic perseverance,&#xD;
and more clarity when establishing their career and personal objectives. When mentees were&#xD;
emotionally open and compatible with their mentoring approach, mentors found it simpler to&#xD;
offer advice.&#xD;
An innovative, human-centred method of academic support is introduced by incorporating&#xD;
psychological concepts into a machine learning-based mentor selection system. This method&#xD;
meets students' emotional and cognitive demands while also enhancing the caliber of mentoring&#xD;
relationships. Future studies will examine adaptive learning platforms that modify mentor&#xD;
recommendations in response to students' academic and psychological development.</summary>
    <dc:date>2025-06-01T00:00:00Z</dc:date>
  </entry>
  <entry>
    <title>Development Of A Model To Analyze &amp; Interpret Vernacular Voice Recognition Of Gujarati Dialects</title>
    <link rel="alternate" href="http://10.9.150.37:8080/dspace//handle/atmiyauni/2294" />
    <author>
      <name>Shah, Meerabahen M.</name>
    </author>
    <author>
      <name>Kavathiya, Hiren R.</name>
    </author>
    <id>http://10.9.150.37:8080/dspace//handle/atmiyauni/2294</id>
    <updated>2025-01-28T10:24:50Z</updated>
    <published>2024-12-01T00:00:00Z</published>
    <summary type="text">Title: Development Of A Model To Analyze &amp; Interpret Vernacular Voice Recognition Of Gujarati Dialects
Authors: Shah, Meerabahen M.; Kavathiya, Hiren R.
Abstract: The development of voice recognition systems tailored to vernacular dialects holds&#xD;
transformative potential for enhancing accessibility and inclusivity in technology. This thesis&#xD;
focuses on creating a voice recognition model specifically designed for vernacular Gujarati&#xD;
dialects, addressing the unique linguistic and phonetic challenges inherent in regional&#xD;
variations of the language.&#xD;
The key part of this research was to gather a diverse and representative spoken Gujarati corpora&#xD;
sourced via varied public repositories, which includes radio broadcast, interview, folk song,&#xD;
community recording and public availability speech corpora. This dataset includes a variety of&#xD;
dialectal variation in phonology, syntax and usage to guarantee robustness and inclusivity to&#xD;
the development of the models.&#xD;
A dialect-specific recognition system using advanced techniques in voice recognition system,&#xD;
including deep learning architectures the proposed framework and model was developed. The&#xD;
model is further enriched with dialectal linguistic features integrated to its architecture,&#xD;
phoneme based pretraining to increase recognition accuracy, and transfer learning to adapt&#xD;
general speech recognition systems to dialect specific nuances.&#xD;
The model was evaluated and found to achieve substantial improvement in phoneme&#xD;
recognition accuracy over baseline systems. The results show that modeling context-aware,&#xD;
high quality, diverse datasets are crucial to vernacular speech recognition. The system&#xD;
developed is there to provide practical applications for voice enabled user interface, digital&#xD;
accessibility and protection of linguistic diversity more specific examples of such languages&#xD;
which are least represented.&#xD;
This work contributes to the emerging area of regional language processing with an end-to-end&#xD;
framework that can be used for future work on low-resource languages and dialects and to build&#xD;
inclusive, ubiquitous and accessible technology solutions in multilingual communities.</summary>
    <dc:date>2024-12-01T00:00:00Z</dc:date>
  </entry>
  <entry>
    <title>To Identify Learning Path for Novice Programmer Based on Semi-supervised Dataset Using Proposed Machine Learning Algorithm</title>
    <link rel="alternate" href="http://10.9.150.37:8080/dspace//handle/atmiyauni/2284" />
    <author>
      <name>Shukla, Kapil Kaushikkumar</name>
    </author>
    <author>
      <name>Shukla, Parag C.</name>
    </author>
    <id>http://10.9.150.37:8080/dspace//handle/atmiyauni/2284</id>
    <updated>2025-01-10T07:14:23Z</updated>
    <published>2024-01-01T00:00:00Z</published>
    <summary type="text">Title: To Identify Learning Path for Novice Programmer Based on Semi-supervised Dataset Using Proposed Machine Learning Algorithm
Authors: Shukla, Kapil Kaushikkumar; Shukla, Parag C.
Abstract: In many instances, programming education is non-personalized and has left so many learners&#xD;
without much interest or not being proficient enough to reach the programming level of&#xD;
proficiency. Most of these traditional approaches give way more attention to correction&#xD;
mistakes instead of personalized assignments for every learning difference. In contrast, most&#xD;
online modern coding websites always use one work for all regardless of differing levels of&#xD;
proficiency by just ignoring the need to give different works for the slow, medium, and fast&#xD;
learners.&#xD;
This research work suggests a new hybrid learning methodology using machine learning to&#xD;
classify types of learners based on their contribution to code and performance in tasks. The&#xD;
system will automatically recommend individualized coding projects based on the examination&#xD;
of the criteria such as accuracy, error patterns, and performance, matched to the ability of each&#xD;
learner. It applies advanced techniques in machine learning such as Random Forest, XGBoost,&#xD;
and Adaptive Ensemble Classification Weighting (AECW) algorithm to make performance&#xD;
prediction, manage the difficulty of jobs, and effectively balance classes. These models are also&#xD;
appraised using other metrics, such as accuracy, precision, recall, and F1-score.&#xD;
The research clearly demonstrates that ensemble methods improve both the predictive accuracy&#xD;
and task adaptability without causing overfitting. It not only enhances the outcome of learning&#xD;
but also helps instructors practically understand students' performance. This is a step to&#xD;
transform the process of programming education using scalable, data-driven techniques with&#xD;
predictive analytics integrated with adaptive task sequencing.</summary>
    <dc:date>2024-01-01T00:00:00Z</dc:date>
  </entry>
  <entry>
    <title>Design And Development Of Decision Support System To Recommend Nutritious Food For Cardiovascular Patients</title>
    <link rel="alternate" href="http://10.9.150.37:8080/dspace//handle/atmiyauni/2057" />
    <author>
      <name>Mehta, Nirav Pareshkumar</name>
    </author>
    <author>
      <name>Thaker, Hetal</name>
    </author>
    <id>http://10.9.150.37:8080/dspace//handle/atmiyauni/2057</id>
    <updated>2024-11-26T07:49:48Z</updated>
    <published>2024-11-01T00:00:00Z</published>
    <summary type="text">Title: Design And Development Of Decision Support System To Recommend Nutritious Food For Cardiovascular Patients
Authors: Mehta, Nirav Pareshkumar; Thaker, Hetal
Abstract: Cardiovascular diseases (CVDs) are among the leading causes of mortality worldwide, and&#xD;
their prevalence is rapidly increasing in the Gujarat region of India. A major factor in&#xD;
managing cardiovascular health is adhering to a heart-healthy diet, which often presents&#xD;
challenges for patients in balancing nutritional needs with personal food preferences. To&#xD;
address this issue, this research introduces a *Nutrition-Based Recommendation System&#xD;
(NBRS)* aimed at providing personalized dietary guidance for individuals with heart-related&#xD;
problems. The NBRS leverages machine learning techniques to generate food&#xD;
recommendations that are not only nutritious but also aligned with individual tastes, daily&#xD;
calorie requirements, and cultural contexts, specifically focusing on the dietary habits of&#xD;
Gujarat.&#xD;
The foundation of this research lies in a thorough analysis of both primary and secondary&#xD;
data sources. Primary data was collected using a detailed questionnaire distributed to&#xD;
individuals with cardiovascular conditions. This questionnaire sought to capture their dietary&#xD;
habits, preferences, and ratings for various food items on a scale from 1 to 10. A dataset of&#xD;
over 90 distinct foods was compiled, each categorized into 15 groups such as fruits,&#xD;
vegetables, staple meals, and specific regional dishes like roti, bhakhri, thepla, dal, and rice.&#xD;
For each food item, nutritional parameters including fat, fiber, protein, carbohydrates, serving&#xD;
size, and calorie content were meticulously recorded. The secondary data included&#xD;
established nutritional guidelines for cardiac patients, emphasizing foods with high fiber and&#xD;
low fat. By integrating these insights, the dataset was structured to facilitate effective analysis&#xD;
and recommendation generation.&#xD;
A significant aspect of this model is its focus on *seasonal availability* of foods, ensuring&#xD;
that recommendations are practical and accessible. For instance, fruits like mangoes and&#xD;
apples were included, but their suggestions were aligned with their seasonal production to&#xD;
enhance freshness and nutritional value. This seasonal consideration allows the NBRS to&#xD;
remain relevant and adaptive throughout the year, providing users with timely options that are&#xD;
both heart-healthy and regionally appropriate.</summary>
    <dc:date>2024-11-01T00:00:00Z</dc:date>
  </entry>
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