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0000450765 00000 n 0000422739 00000 n The computer revolution still has a way to go to deliver on that particular promise. Tj 57 0 TD 0 Tc -0.1875 Tw ( ) Tj -49.5 -11.25 TD 0.095 Tc 1.1104 Tw (Previous studies of authoring clearly indicate that ) Tj -7.5 -12 TD 0.1517 Tc 0.8394 Tw (authoring tools must support the use of paper) Tj 188.25 0 TD -0.2467 Tc 0 Tw (-) Tj 3 0 TD 0.0599 Tc -0.2474 Tw (based ) Tj -191.25 -11.25 TD 0.1247 Tc 4.7235 Tw (sources but they leave a number of questions) Tj 0 Tc -0.1875 Tw ( ) Tj 0 -11.25 TD 0.0975 Tc 4.1079 Tw (unanswered that must be addressed in order to) Tj 0 Tc -0.1875 Tw ( ) Tj 0 -12 TD -0.3109 Tc 0 Tw (fo) Tj 8.25 0 TD 0.13 Tc 2.1468 Tw (rmulate requirements for the design of efficient ) Tj -8.25 -11.25 TD 0.1515 Tc 2.286 Tw (authoring systems. Tj 20.25 0 TD 0 Tc -0.1875 Tw ( ) Tj -109.5 -11.25 TD /F0 9.75 Tf ( ) Tj 0 -12.75 TD /F1 12 Tf 0.055 Tc 0 Tw (Introduction) Tj 64.5 0 TD 0 Tc ( ) Tj -57 -12.75 TD /F0 9.75 Tf 0.1307 Tc 0.3247 Tw (People from virtually every branch of professional ) Tj -7.5 -11.25 TD 0.1417 Tc 0.4208 Tw (work author electronic documents while referring ) Tj 205.5 0 TD 0.3322 Tc 0.2303 Tw (to ) Tj -205.5 -11.25 TD 0.1361 Tc 0.1452 Tw (paper documents such as books, articles and reports. ) 21st STOC, pp. In: Proceedings of the 49th annual meeting of the Association for Computational Linguistics: human language technologies. 0000013791 00000 n 0000451108 00000 n 0000427084 00000 n

Mumbai, pp 2093–2108, Ng JP, Chen Y, Kan MY, Li Z (2014) Exploiting timelines to enhance multi-document summarization. s��,��p8j�!P >�`4MC_�Ih ���f�g��,���B�$��ޡ��j�$��� \)�d{e&�����@�%�y�XDz�z,�����|��Ѐ� ���x ����0 �� In Advances in Cryptology—Eurocrypt '90. Brief introduction to this section that descibes Open Access especially from an IntechOpen perspective, Want to get in touch? Advances in Dual Diagnosis (ADD) is an international applied research journal offering peer-reviewed, practical and thought-provoking content and a forum for topical debate on dual diagnosis (co-occurring substance abuse and mental health conditions) and complex needs. 0000013910 00000 n G. Brassard and M. Yung.


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