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54c903b0-5064-481e-82a8-61dd73f4086d | Anonymous Post-Quantum Cryptocash ? ( Full Version ) | [{"id": "09c1ba685a08632e4a35eac23f2888ffa4572746", "score": 1}, {"id": "14829636fee5a1cf8dee9737849a8e2bdaf9a91f", "score": 1}, {"id": "8d69c06d48b618a090dd19185aea7a13def894a5", "score": 1}, {"id": "02dc2a93a48d38deae9f1369d5b33ce98af2a3f2", "score": 1}, {"id": "1345c39bea4802e20cc7e3adbc3e3287c1839c8a", "score": 1}] | e6be9c497285ece7f32b486c6cc72193b5a1fcb9 | test |
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3b43aff7-4828-4721-8315-4beb2226836f | Water Nonintrusive Load Monitoring | [{"id": "8ff18d710813e5ea50d05ace9f07f48006430671", "score": 1}, {"id": "a72f86022a03207f08906cc4767d6d8e22eb1791", "score": 1}, {"id": "d4d5a73c021036dd548f5fbe71dbdabcad378e98", "score": 1}, {"id": "3556c846890dc0dbf6cd15ebdcd8932f1fdef6a2", "score": 1}, {"id": "3e093d3f7efe5f653ff1daba0f9d95d8081ad225", "score": 1}] | c6e446d78d05c74bad63cf23997c595eebbe6113 | test |
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c09a3afb-627b-4e31-9adf-9b14435c82dc | Analysis and Experimental Kinematics of a Skid-Steering Wheeled Robot Based on a Laser Scanner Sensor | [{"id": "27f9b805de1f125273a88786d2383621e60c6094", "score": 1}, {"id": "656dce6c2b7315518cf0aea5d5b2500f869ab223", "score": 1}, {"id": "760c81c0a19f8358dde38691b81fe2f20c829b44", "score": 1}, {"id": "7df9117c67587f516fd4b13bd9df88aff9ab79b3", "score": 1}, {"id": "9d9fc59f80f41915793e7f59895c02dfa6c1e5a9", "score": 1}] | 3565d884735ead613a5aa0903f06a2cc86d05b6b | test |
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862b028c-cbea-41ca-b259-20e77a43d0ef | Improving Naive Bayes Classifier Using Conditional Probabilities | [{"id": "50287b978d60343ba3dd5225dffc86eb392722c8", "score": 1}, {"id": "5fb874a1c8106a5b2b2779ee8e1433149109ba00", "score": 1}, {"id": "7783fd2984ac139194d21c10bd83b4c9764826a3", "score": 1}, {"id": "837ae38d8eba5635fb8a2e0a5cdb4764e8ea348a", "score": 1}, {"id": "91549f524d37dc08316ab3f98483386d790ecbfe", "score": 1}] | c9dd5ae24520d8cdddfdf8ef6d5f925445e310d9 | test |
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bfe87207-25c9-42f9-ac2d-e13cffc4654e | Issues,Challenges and Tools of Clustering Algorithms | [{"id": "25ebaeb46b4fb3ee1a9d6769832c97cdece00865", "score": 1}, {"id": "e8480bca4664e9944fdd473e08bb9bcafea0551c", "score": 1}, {"id": "b07ce649d6f6eb636872527104b0209d3edc8188", "score": 1}, {"id": "c49ba2f8ed1ccda37f76f4f01624bce0768ef6ae", "score": 1}, {"id": "cdf92f0295cbe97c241fb12f239e4268b784bd34", "score": 1}] | 7b49bd891f632ca6e86e5ccccdc3761ceb3fd277 | test |
1d92c964-4c8f-4bd1-80f0-aa06aaae0d62 | Quaternion Convolutional Neural Networks for End-to-End Automatic Speech Recognition | [{"id": "0be102aa23582c98c357fbf3fcdbd1b6442484c9", "score": 1}, {"id": "272216c1f097706721096669d85b2843c23fa77d", "score": 1}, {"id": "2c03df8b48bf3fa39054345bafabfeff15bfd11d", "score": 1}, {"id": "44726d8c654f3cc21e7e6bbc01b4f2bd74cd658e", "score": 1}, {"id": "0172cec7fef1815e460678d12eb51fa0d051a677", "score": 1}] | 45fdc73a239e9c6ea65e98c96f6a2d6dc35d6f72 | test |
5bcc877b-ef3d-4bd7-ace0-5b3436c83bb8 | Improving Japanese-to-English Neural Machine Translation by Paraphrasing the Target Language | [{"id": "0d42801cda0e6c80a6bcaf31efe6cf853fa052d0", "score": 1}, {"id": "13880d8bbfed80ab74e0a757292519a71230a93a", "score": 1}, {"id": "1518039b5001f1836565215eb047526b3ac7f462", "score": 1}, {"id": "53ca01f8c593b2339f292672b183235da5f6ce70", "score": 1}, {"id": "6ce83cede4d31b40c0b5bed6d1899d89de2ee28b", "score": 1}] | 1312b0d0a957fc2bbfc2612dd89ba9003c57a08c | test |
0effa670-99c3-4c47-8ee7-c5534887e307 | Immune System Based Intrusion Detection System | [{"id": "1355972384f2458f32d339c0304862ac24259aa1", "score": 1}, {"id": "23712e35d556e0929c6519c3d5553b896b65747d", "score": 1}, {"id": "fa4f763cf42d5c5620cedaa0fa5ce9195ff750c3", "score": 1}, {"id": "238d215ea37ed8dda2b3f236304914e3f7d72829", "score": 1}, {"id": "4e85503ef0e1559bc197bd9de0625b3792dcaa9b", "score": 1}] | 12219a387158e41e212af4ae1c57a29934627128 | test |
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