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Research Library

All reports in ¾«¶«Ó°Òµâ€™s Research Library are available upon request. Executive summaries are available below for the latest LSAT Technical Reports and other research published within the last 10 years.

Looking for older reports? Consult the Research Archive

Current Research:

This report focuses on first-year law school enrollment from 2021 through 2025, highlighting who is enrolling in law school, where they enrolled, and how rates of enrollment of racially and ethnically minoritized students varied across law schools.
As predictive validity is an important component in the overall evaluation of test validity, ¾«¶«Ó°Òµ has carried out predictive validity studies, also called LSAT Correlation Studies, since the test was first administered.
This report provides important insights that law schools and stakeholders can use to support student retention and development in law school and beyond.
What funding sources did the 2024 1L class use to pay for law school? How much debt do they expect to have when they graduate?
This report focuses on the 2024 1L class, examining who is enrolling in law school, where they enrolled, and how they made their enrollment decision.
This report focuses on first-year law school enrollment from 2021 through 2024, highlighting who is enrolling in law school, where they enrolled, and how rates of enrollment of racially and ethnically minoritized students varied across law schools.

A Foundation of Validity

Beginning with the very first notion of a standardized test for admission to law school, validity was a primary focus. In his May 17, 1945 letter to the College Entrance Examination Board (CEEB) suggesting the development of such a test, Frank H. Bowles, Director of Admissions at Columbia University, stated the seven criteria listed below.

A closer look at available data suggests that an admission process without the LSAT could leave well-qualified candidates out in the cold.
By Gregory Camilli
The most recent correlation study of LSAT results shows that LSAT scores are far superior to UGPA in predicting 1L success.

Since the inception of the Law School Admission Test (LSAT), the Law School Admission Council (¾«¶«Ó°Òµ) has sought to evaluate and ensure its validity for use in the law school admission process. As predictive validity is an important component in the overall evaluation of test validity, ¾«¶«Ó°Òµ has carried out predictive validity studies, also called LSAT Correlation Studies, since the test was first administered.

Contextual Information for Holistic Evaluation in Law School Admission

The figure below shows the progression of undergraduate yearly grade-point average (GPA) for law school applicants across 4 years of undergraduate study divided into quintiles based on individual Law School Admission Test (LSAT) scores.

The goal of the Law School Admission Council (¾«¶«Ó°Òµ) Skills Analysis Study is to identify the skills that law school faculty consider important for success in required law school courses. If certain tasks are required of all or most law school required courses, the skills involved in those tasks can be inferred to be essential to success in law school.

When faced with multiple scores from repeat test takers, users of standardized assessments typically employ three score types — most recent, highest, and average scores — in order to summarize an individual’s related performance. This study examined the validity of these three score types for Law School Admission Test (LSAT) scores in terms of predicting first-year averages...

This study employed a data simulation to evaluate the impact of a strategy to reduce test length by including only high-quality test questions, where quality was defined by a statistical indicator of the degree to which a question distinguishes between more and less able test takers. The impact of this strategy on the rank ordering of simulated test takers according to their total test score was evaluated, as was the predictive validity and classification accuracy of scores based on the shorter tests.

Automated methods have been developed for assembling test forms, evaluating a pool of test questions (i.e., items) to determine the number of test form assemblies it can support, and designing an item pool that can most efficiently support the test form assembly process. Automated methods have greatly maintained and improved such activities, all of which are essential to the support of every testing program. This report reviews the major approaches that have been applied in the development of these methods.

The problems of item pool analysis and design are the subject of many recent studies. The rationale for this type of research is to increase the usability of existing item pools and to decrease the cost of designing new items. Clearly these are crucial problems for all testing agencies.

Since the inception of the Law School Admission Test (LSAT), the Law School Admission Council (¾«¶«Ó°Òµ) has sought to evaluate and ensure its validity for use in the law school admission process. As predictive validity is an important component in the overall evaluation of test validity, ¾«¶«Ó°Òµ has carried out annual predictive validity studies, also called LSAT Correlation Studies, since the test was first administered.

Many standardized tests are now administered via computer rather than paper and pencil. The computer-based delivery mode brings with it certain advantages, such as the ability to record not only the test taker’s response to each item (i.e., question), but also the amount of time the test taker spends considering and answering each item. The analysis of response times (RTs) is still a developing area of research.

A mathematical model called item response theory is often applied to high-stakes tests to estimate test-taker ability level and to determine the characteristics of test questions (i.e., items). Often, these tests contain subsets of items (testlets) grouped around a common stimulus. This grouping often leads to items within one testlet being more strongly correlated among themselves than among items from other testlets, which can result in moderate to strong testlet effects.

Text similarity measurement provides a rich source of information and is increasingly being used in the development of new educational and psychological applications. However, due to the high-stakes nature of educational and psychological testing, it is imperative that a text similarity measure be stable (or robust) to avoid uncertainty in the data. The present research was sparked by this requirement. First, multiple sources of uncertainty that may affect the computation of semantic similarity between two texts are enumerated.