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Full-Text Articles in Evidence

Hearsay In The Smiley Face: Analyzing The Use Of Emojis As Evidence, Erin Janssen Jun 2018

Hearsay In The Smiley Face: Analyzing The Use Of Emojis As Evidence, Erin Janssen

St. Mary's Law Journal

Abstract forthcoming


The Face-Off Between Data Privacy And Discovery: Why U.S. Courts Should Respect Eu Data Privacy Law When Considering The Production Of Protected Information, Samantha Cutler Apr 2018

The Face-Off Between Data Privacy And Discovery: Why U.S. Courts Should Respect Eu Data Privacy Law When Considering The Production Of Protected Information, Samantha Cutler

Boston College Law Review

When foreign parties involved in U.S. litigation are ordered to produce information that is protected by EU data privacy law, they are caught in an unfortunate “Catch-22.” Historically, U.S. courts have pointed to the unlikelihood of sanctions for data privacy law violations to justify these orders. EU data privacy law, however, has recently undergone several shifts in favor of tougher rules and significantly increased sanctions. Additionally, EU regulators are now more vigilant and active in enforcing these laws. These developments, combined with the benefits of international judicial respect and the intrinsic value of privacy, mean that U.S ...


Technological Opacity & Procedural Injustice, Seth Katsuya Endo Mar 2018

Technological Opacity & Procedural Injustice, Seth Katsuya Endo

Boston College Law Review

From Google’s auto-correction of spelling errors to Netflix’s movie suggestions, machine-learning systems are a part of our everyday life. Both private and state actors increasingly employ such systems to make decisions that implicate individuals’ substantive rights, such as with credit scoring, government-benefit eligibility decisions, national security screening, and criminal sentencing. In turn, the rising use of machine-learning systems has led to questioning about whether they are sufficiently accurate, fair, and transparent. This Article builds on that work, focusing on how opaque technologies can subtly erode the due process norm of participation. To illuminate this issue, this Article examines ...