Your Experience & Research Articles
Describe your experience with reading research articles.
Share an example of an article that has been useful and applicable to your practice based on your readings. Share an example of an article (or information) that was not helpful.
Provide rationale through critiquing and evaluating the strengths and weaknesses of the articles.
Submission Instructions:
Your initial post must be at least 500 words, formatted, and cited in the current APA style with support from at least two academic sources. Your initial post is worth 8 points. Initial posts without two references will receive an automatic 0 for the complete discussion.
You must respond to at least two of your peers by extending, refuting/correcting, or adding additional nuance to their posts and supporting your opinion with a reference. Response posts must be at least 150 words. Your response (reply) posts are worth 2 points (1 point per response). Your post will include a salutation, a response (150 words), and a reference.
Quotes “…” cannot be used at a higher learning level for your assignments, so sentences need to be paraphrased and referenced.
Acceptable references include scholarly journal articles or primary legal sources (statutes, court opinions), journal articles, and books published in the last five years—no websites or videos to be referenced without prior approval. Discussions using websites as references will receive an automatic 0.
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One article that I found useful and applicable to my practice was “A Comparative Study of Language Models for Information Retrieval” by Bhargav, et al. (2021). The article aimed to compare the effectiveness of different language models, including traditional Boolean retrieval models and neural language models, in information retrieval tasks. The researchers evaluated several models, including the classic Vector Space Model, the BM25 model, and modern language models such as BERT, RoBERTa, and T5. The authors used different Assessment metrics, including Mean Reciprocal Rank (MRR) and Precision, to assess the models’ performance. The article’s findings were insightful and provided a comprehensive comparison of different language models’ effectiveness in information retrieval. The study concluded that the BERT model outperformed other models, including traditional retrieval models, in information retrieval tasks.
One limitation of the article is that the authors only evaluated language models on a single dataset, the TREC 2019 Deep Learning Track, which may not generalize to other datasets. Moreover, the authors did not evaluate the models’ efficiency in terms of time and computational resources required to run the models. Nonetheless, the article’s contribution to the field of information retrieval is significant, especially in understanding the effectiveness of modern language models such as BERT.
On the other hand, an example of an article that was not helpful was “The Effects of Social Media Use on Mental Health: A Meta-Analysis” by Lin and Sidani (2018). The article aimed to examine the association between social media use and mental health outcomes, such as depression, anxiety, and self-esteem. The researchers reviewed and analyzed 70 studies and found that social media use was significantly associated with negative mental health outcomes. However, the article’s findings were not conclusive, as there were inconsistencies in the study designs, measures, and the populations under study. Additionally, the study was limited to cross-sectional designs, which cannot establish causality. Therefore, the article’s findings should be interpreted with caution, and more rigorous studies are needed to establish a conclusive relationship between social media use and mental health outcomes.
The two articles discussed demonstrate the importance of critically evaluating research articles. While the first article provided useful insights into the effectiveness of language models in information retrieval, the second article highlights the limitations of meta-analyses and cross-sectional studies in establishing causal relationships. Researchers and practitioners should carefully evaluate the strengths and weaknesses of research articles before applying their findings in practice.