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… Qualified Rhodes Students Guaranteed Admission to Clinton School of Public Service, Thanks to New … of Arkansas’ Clinton School of Public Service for the 2026-27 academic year, thanks to a new agreement between the … will host Clinton School faculty and staff for campus visits that may include guest lectures and opportunities to …
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… Rhodes College Alumna Amy Coney Barrett ’94 Confirmed to the Supreme Court of the United States President Donald … South Lawn of the White House in Washington, Monday, Oct. 26, 2020, after Barrett was confirmed by the Senate earlier … After the nomination was considered by the Judiciary Committee and reported to the United States Senate, the …
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… Garrison, and Lauren Surratt—presented research at the 26th Annual Conference on Research in Undergraduate … (RUME) held recently in Omaha, NE. Prof. Erika David Parr accompanied the group. The national conference, which is … and 100 virtual attendees, primarily faculty members and doctoral students. The following students made poster …
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… Stephen Breyer met with students before his talk on October 3. Published on: March 30, 2020 Supreme Court Justice … were able to meet Breyer before his lecture. The group of 26 students discussed their coursework with him, and their … But there are billions of people in the world, and the best way to find out about lives that aren’t yours is by …
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… for Prestigious Watson Fellowship Published on: November 26, 2018 Rhodes’ Postgraduate Scholarship Committee is endorsing three seniors to compete for the prestigious Thomas J. Watson Fellowship, …
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… New Book Highlights the Intersection of Buddhism and Tourism in Asia Published on: April 01, 2020 Dr. Brooke … Asian studies, Buddhist studies, and religious studies. Her latest book is a co-edited volume with Courtney Bruntz of … with Buddhism through tourism. Contributors examine sacred places and religious monuments as they have been shaped and …
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… Billboard Names Rhodes a Top Music Business School Published on: January 21, 2023 … with Grammy-winning blues musician (and 2014 Curb Visiting Scholar in the Arts) Bobby Rush, which was released … house originally was used as a reception hall and meeting place for musical minds until 2013, when the first …
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… Statement on #NeverAgain Protests Published on: February 26, 2018 We have been asked about Rhodes' admission policy regarding applicants who choose to participate in peaceful protests in the aftermath of the … At Rhodes, our goal is to inspire our students to become powerful, thoughtful, and productive members of society …
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... ... ... 1.598724 <= score(freq=1.0), computed as boost * idf * tf from:
... ... ... ... 2.000000 <= boost
... ... ... ... 1.608786 <= idf, computed as log(1 + (N - n + 0.5) / (n + 0.5)) from:
... ... ... ... ... 153.000000 <= n, number of documents containing term
... ... ... ... ... 766.000000 <= N, total number of documents with field
... ... ... ... 0.496873 <= tf, computed as freq / (freq + k1 * (1 - b + b * dl / avgdl)) from:
... ... ... ... ... 1.000000 <= freq, occurrences of term within document
... ... ... ... ... 1.200000 <= k1, term saturation parameter
... ... ... ... ... 0.750000 <= b, length normalization parameter
... ... ... ... ... 600.000000 <= dl, length of field (approximate)
... ... ... ... ... 757.801600 <= avgdl, average length of field
... ... 0.248643 <= weight(tm_X3b_und_rendered_item:for in 753) [SchemaSimilarity], result of:
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... ... ... ... 2.000000 <= boost
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... ... ... ... ... 649.000000 <= n, number of documents containing term
... ... ... ... ... 766.000000 <= N, total number of documents with field
... ... ... ... 0.747647 <= tf, computed as freq / (freq + k1 * (1 - b + b * dl / avgdl)) from:
... ... ... ... ... 3.000000 <= freq, occurrences of term within document
... ... ... ... ... 1.200000 <= k1, term saturation parameter
... ... ... ... ... 0.750000 <= b, length normalization parameter
... ... ... ... ... 600.000000 <= dl, length of field (approximate)
... ... ... ... ... 757.801600 <= avgdl, average length of field
... 1.210692 <= sum(float(boost_document)=1.0,product(const(21.0),0.1/(3.16E-11*float(ms(const(1775530800000),date(ds_created)=2016-04-26T18:42:23Z))+0.05)))
… Learned In and Out of the Classroom Published on: April 26, 2016 Since 1996, the Undergraduate Research and Creative … Symposium (URCAS) has been showcasing students’ work to the campus. It has been so impressive, inspiring, and … presentations. This year’s event is April 29 and will take place at various locations on campus throughout the day. …
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... ... ... 3.438676 <= score(freq=2.0), computed as boost * idf * tf from:
... ... ... ... 2.000000 <= boost
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... ... ... ... ... 50.000000 <= n, number of documents containing term
... ... ... ... ... 766.000000 <= N, total number of documents with field
... ... ... ... 0.631990 <= tf, computed as freq / (freq + k1 * (1 - b + b * dl / avgdl)) from:
... ... ... ... ... 2.000000 <= freq, occurrences of term within document
... ... ... ... ... 1.200000 <= k1, term saturation parameter
... ... ... ... ... 0.750000 <= b, length normalization parameter
... ... ... ... ... 728.000000 <= dl, length of field (approximate)
... ... ... ... ... 757.801600 <= avgdl, average length of field
... ... 0.148500 <= weight(tm_X3b_und_rendered_item:to in 830) [SchemaSimilarity], result of:
... ... ... 0.148500 <= score(freq=17.0), computed as boost * idf * tf from:
... ... ... ... 2.000000 <= boost
... ... ... ... 0.079337 <= idf, computed as log(1 + (N - n + 0.5) / (n + 0.5)) from:
... ... ... ... ... 708.000000 <= n, number of documents containing term
... ... ... ... ... 766.000000 <= N, total number of documents with field
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... ... ... ... ... 17.000000 <= freq, occurrences of term within document
... ... ... ... ... 1.200000 <= k1, term saturation parameter
... ... ... ... ... 0.750000 <= b, length normalization parameter
... ... ... ... ... 728.000000 <= dl, length of field (approximate)
... ... ... ... ... 757.801600 <= avgdl, average length of field
... ... 3.438676 <= sum of:
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... ... ... ... ... ... 766.000000 <= N, total number of documents with field
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... ... ... ... ... ... 0.750000 <= b, length normalization parameter
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... ... ... ... ... 649.000000 <= n, number of documents containing term
... ... ... ... ... 766.000000 <= N, total number of documents with field
... ... ... ... 0.872923 <= tf, computed as freq / (freq + k1 * (1 - b + b * dl / avgdl)) from:
... ... ... ... ... 8.000000 <= freq, occurrences of term within document
... ... ... ... ... 1.200000 <= k1, term saturation parameter
... ... ... ... ... 0.750000 <= b, length normalization parameter
... ... ... ... ... 728.000000 <= dl, length of field (approximate)
... ... ... ... ... 757.801600 <= avgdl, average length of field
... 1.223286 <= sum(float(boost_document)=1.0,product(const(21.0),0.1/(3.16E-11*float(ms(const(1775530800000),date(ds_created)=2016-11-18T16:33:38Z))+0.05)))
… November 18, 2016 This past summer, Kelsey Sweeney ’17 accomplished a goal she set in her first year at Rhodes: to study Chinese in China. Her interest in the Chinese … from some of the most well-known historic sites in China. Places like the Summer Palace and Tiananmen Square were in …