Developing the NLP-QFD Model to Discover Key Success Factors of Short Videos on Social Media
Abstract
:1. Introduction
2. Related Works
2.1. Short Videos on Social Media
2.2. Movie Success Factors
2.3. NLP
2.4. LDA
2.5. QFD
3. Methodology
- Step 1: Data Collection
- Step 2. Transform audio data into text data
- Step 3. Data pre-processing and natural language processing
- Step 3.1: Tokenization
- Step 3.2: Data cleaning
- Step 3.3: Lemmatization
- Step 3.4: Calculate term frequency
- Step 3.5: Construct Term-Document Matrix (TDM)
- Step 4: Topic Extraction
- Step 5: Build Candidate Factors of Short Videos
- Step 6: Determining KSFs by using QFD
- Step 7: Discussion and Drawing Conclusions
4. Results
4.1. Used Case and Data Collection
4.2. Results of LDA
4.2.1. Authentic Voices behind News Short Videos
4.2.2. Short Video Content Analysis
4.3. Determining Key Success Factors of Short Videos
5. Discussion
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Notation | Factors | Definitions | Supports |
---|---|---|---|
S1 | Famous guys | The famous individuals or officers in short videos. | [7,8,18] |
S2 | Social Media | Utilizing social media platforms to enhance the dissemination power of short videos. | [7,9,11,17] |
S3 | Shooting | Referring to the cinematography techniques and methods used in filming. It can make the audience feel like they are there. | [7,18] |
S4 | Storyline | The storyline of a short movie highly determines its performance. | [7,8,18] |
S5 | Reviews | The reviews or comments from those who have already watched the video can influence the viewing intention of those who have not yet watched it. | [16,17] |
S6 | Movie title | The title of a short movie. An informative movie title has a positive impact on the amount of views. | [10] |
S7 | Promotion | In this study, it refers to the name of the media being mentioned. It can enhance the credibility of short news videos. | [7,17,18] |
S8 | Music | In this study, it refers to emotionally gripping music or real-world background voices. | [11] |
Topic #1 | Topic #2 | Topic #3 | Topic #4 | Topic #5 | Topic #6 | ||||||
---|---|---|---|---|---|---|---|---|---|---|---|
Terms | Loadings | Terms | Loadings | Terms | Loadings | Terms | Loadings | Terms | Loadings | Terms | Loadings |
child | 0.022 | israeli | 0.022 | child | 0.033 | god | 0.02 | israel | 0.026 | israel | 0.031 |
israeli | 0.017 | child | 0.017 | palestine | 0.022 | je | 0.017 | child | 0.021 | kid | 0.025 |
kid | 0.016 | israel | 0.017 | year | 0.015 | silom | 0.015 | old | 0.015 | child | 0.015 |
palestinian | 0.012 | palestinian | 0.017 | free | 0.015 | bilo | 0.015 | could | 0.014 | stop | 0.014 |
zionist | 0.011 | human | 0.012 | israel | 0.013 | se | 0.015 | leader | 0.014 | israeli | 0.012 |
people | 0.011 | call | 0.012 | right | 0.01 | people | 0.014 | world | 0.012 | palestinian | 0.012 |
world | 0.01 | animal | 0.012 | stop | 0.01 | chosen | 0.013 | one | 0.011 | year | 0.011 |
israel | 0.009 | de | 0.011 | old | 0.009 | immoral | 0.013 | shame | 0.011 | please | 0.011 |
one | 0.008 | people | 0.011 | kid | 0.009 | dosta | 0.012 | yr | 0.01 | allah | 0.011 |
see | 0.007 | year | 0.009 | west | 0.009 | da | 0.01 | boy | 0.008 | west | 0.011 |
year | 0.007 | right | 0.009 | never | 0.009 | decu | 0.01 | treat | 0.008 | zionist | 0.010 |
heart | 0.007 | like | 0.008 | nothing | 0.009 | israel | 0.009 | lie | 0.007 | people | 0.010 |
generation | 0.007 | world | 0.008 | going | 0.009 | barbaric | 0.008 | coward | 0.007 | old | 0.009 |
must | 0.007 | know | 0.008 | pick | 0.009 | see | 0.008 | whole | 0.007 | humanity | 0.008 |
crime | 0.007 | jew | 0.008 | innocent | 0.008 | state | 0.007 | wish | 0.007 | peace | 0.008 |
state | 0.006 | terrorist | 0.007 | need | 0.008 | zlocine | 0.007 | way | 0.007 | need | 0.008 |
cry | 0.006 | thing | 0.007 | palestinian | 0.008 | zla | 0.007 | become | 0.007 | watch | 0.008 |
time | 0.006 | south | 0.007 | jew | 0.007 | genocida | 0.007 | dare | 0.007 | kidnapper | 0.008 |
real | 0.006 | speak | 0.007 | nazi | 0.007 | masakra | 0.007 | innocent | 0.007 | generation | 0.008 |
innocent | 0.006 | also | 0.007 | stone | 0.007 | allah | 0.007 | israeli | 0.007 | palestine | 0.008 |
kidnapper | 0.005 | native | 0.007 | crazy | 0.007 | zionist | 0.007 | arrested | 0.007 | may | 0.008 |
abuse | 0.005 | africa | 0.007 | arrest | 0.007 | happened | 0.007 | today | 0.007 | future | 0.008 |
code | 0.005 | boy | 0.007 | hamas | 0.007 | still | 0.007 | hamas | 0.006 | crime | 0.008 |
humanity | 0.005 | may | 0.007 | people | 0.007 | human | 0.007 | know | 0.006 | state | 0.007 |
palestine | 0.005 | west | 0.002 | name | 0.006 | may | 0.007 | crime | 0.006 | government | 0.007 |
Topic #1 | Topic #2 | Topic #3 | Topic #4 | Topic #5 | Topic #6 | Topic #7 | |||||||
---|---|---|---|---|---|---|---|---|---|---|---|---|---|
Terms | Loadings | Terms | Loadings | Terms | Loadings | Terms | Loadings | Terms | Loadings | Terms | Loadings | Terms | Loadings |
palestine | 0.050 | israel | 0.034 | child | 0.028 | israeli | 0.021 | child | 0.033 | Israel | 0.027 | child | 0.042 |
free | 0.028 | jew | 0.017 | year | 0.020 | west | 0.021 | know | 0.015 | Je | 0.020 | israel | 0.022 |
please | 0.021 | israeli | 0.016 | israeli | 0.016 | child | 0.020 | israel | 0.015 | Bilo | 0.017 | human | 0.017 |
stop | 0.020 | monster | 0.014 | old | 0.015 | world | 0.017 | people | 0.015 | Silom | 0.017 | world | 0.015 |
child | 0.018 | animal | 0.013 | kid | 0.015 | palestinian | 0.016 | see | 0.012 | Se | 0.017 | innocent | 0.013 |
israel | 0.017 | rule | 0.012 | hamas | 0.012 | one | 0.015 | palestinian | 0.011 | dosta | 0.014 | terrorist | 0.012 |
kid | 0.017 | child | 0.012 | israel | 0.012 | year | 0.013 | country | 0.010 | Le | 0.012 | palestinian | 0.012 |
innocent | 0.014 | kid | 0.011 | like | 0.011 | jew | 0.012 | year | 0.010 | supporting | 0.011 | israeli | 0.011 |
right | 0.013 | regime | 0.010 | west | 0.010 | old | 0.012 | throwing | 0.010 | decu | 0.011 | people | 0.010 |
world | 0.012 | time | 0.009 | terrorist | 0.010 | people | 0.011 | zionist | 0.009 | Da | 0.011 | criminal | 0.009 |
going | 0.011 | world | 0.009 | palestinian | 0.010 | right | 0.010 | medium | 0.009 | disgusting | 0.008 | know | 0.009 |
people | 0.011 | isreal | 0.009 | must | 0.010 | zionist | 0.010 | freedom | 0.009 | genocida | 0.008 | ameen | 0.009 |
men | 0.010 | truth | 0.009 | beyond | 0.010 | israel | 0.010 | humanity | 0.008 | zla | 0.008 | kind | 0.009 |
year | 0.010 | hitler | 0.009 | medium | 0.009 | de | 0.009 | well | 0.007 | masakra | 0.008 | kid | 0.009 |
leader | 0.008 | south | 0.009 | police | 0.009 | state | 0.009 | leader | 0.007 | zlocine | 0.008 | drake | 0.008 |
crazy | 0.008 | compared | 0.009 | know | 0.009 | never | 0.008 | anti | 0.007 | que | 0.008 | breaking | 0.008 |
never | 0.008 | million | 0.009 | try | 0.007 | human | 0.008 | around | 0.007 | evil | 0.007 | grow | 0.008 |
occupation | 0.008 | exposed | 0.009 | could | 0.007 | idf | 0.007 | tell | 0.007 | government | 0.007 | humanity | 0.007 |
fighting | 0.008 | native | 0.009 | state | 0.007 | america | 0.007 | call | 0.007 | future | 0.007 | go | 0.007 |
hammas | 0.008 | africa | 0.009 | said | 0.007 | nothing | 0.007 | victim | 0.007 | generation | 0.007 | fighter | 0.007 |
iseail | 0.008 | state | 0.008 | jew | 0.007 | today | 0.006 | abuser | 0.006 | state | 0.007 | like | 0.007 |
israil | 0.008 | like | 0.008 | crime | 0.006 | happen | 0.006 | horror | 0.006 | watch | 0.006 | may | 0.007 |
nthat | 0.008 | founded | 0.008 | zionist | 0.006 | would | 0.006 | hostage | 0.006 | stand | 0.006 | rule | 0.007 |
imposed | 0.008 | based | 0.008 | right | 0.006 | god | 0.006 | security | 0.006 | su | 0.006 | done | 0.007 |
see | 0.007 | war | 0.008 | nazism | 0.006 | hamas | 0.006 | stone | 0.006 | israel | 0.006 | justice | 0.007 |
Topic #1 | Topic #2 | Topic #3 | Topic #4 | ||||
---|---|---|---|---|---|---|---|
Terms | Loadings | Terms | Loadings | Terms | Loadings | Terms | Loadings |
hamas | 0.034 | hamas | 0.031 | israeli | 0.025 | Hamas | 0.017 |
gaza | 0.031 | israel | 0.027 | gaza | 0.023 | Israeli | 0.013 |
israel | 0.025 | student | 0.021 | israel | 0.021 | Israel | 0.013 |
israeli | 0.022 | speech | 0.017 | conflict | 0.011 | violence | 0.011 |
attack | 0.015 | gaza | 0.014 | family | 0.011 | Tension | 0.010 |
tunnel | 0.014 | impact | 0.011 | situation | 0.011 | palestinian | 0.010 |
war | 0.012 | free | 0.011 | military | 0.009 | Threat | 0.008 |
inside | 0.009 | debate | 0.011 | palestinian | 0.009 | Jewish | 0.008 |
military | 0.008 | israeli | 0.011 | border | 0.007 | War | 0.008 |
music | 0.007 | campus | 0.009 | impact | 0.007 | university | 0.008 |
hostage | 0.007 | career | 0.009 | minister | 0.007 | across | 0.007 |
troop | 0.007 | war | 0.008 | prime | 0.007 | community | 0.007 |
video | 0.007 | anti | 0.008 | individual | 0.007 | muslim | 0.007 |
people | 0.006 | public | 0.008 | death | 0.007 | student | 0.007 |
day | 0.006 | college | 0.008 | operation | 0.006 | Fear | 0.006 |
summary | 0.006 | firm | 0.008 | tension | 0.006 | protest | 0.006 |
show | 0.006 | offer | 0.008 | killed | 0.006 | World | 0.006 |
effort | 0.006 | job | 0.008 | foreign | 0.006 | Gaza | 0.006 |
netanyahu | 0.006 | attack | 0.008 | hostage | 0.006 | hezbollah | 0.004 |
aid | 0.006 | law | 0.008 | rocket | 0.006 | lebanon | 0.004 |
document | 0.006 | military | 0.006 | including | 0.006 | express | 0.004 |
lebanon | 0.006 | conflict | 0.006 | humanitarian | 0.006 | leading | 0.004 |
hezbollah | 0.006 | statement | 0.006 | netanyahu | 0.006 | Rally | 0.004 |
content | 0.006 | semitic | 0.006 | aid | 0.006 | Call | 0.004 |
festival | 0.004 | professor | 0.006 | attack | 0.006 | demonstration | 0.004 |
Topic #1 | Topic #2 | Topic #3 | Topic #4 | ||||
---|---|---|---|---|---|---|---|
Terms | Loadings | Terms | Loadings | Terms | Loadings | Terms | Loadings |
israel | 0.026 | gaza | 0.021 | express | 0.017 | gaza | 0.024 |
israeli | 0.017 | child | 0.019 | palestinian | 0.015 | israeli | 0.017 |
palestinian | 0.012 | hospital | 0.019 | someone | 0.010 | palestinian | 0.014 |
action | 0.010 | yemen | 0.019 | attack | 0.010 | journalist | 0.013 |
transfer | 0.009 | israeli | 0.014 | girl | 0.010 | child | 0.013 |
arm | 0.009 | people | 0.012 | people | 0.010 | u | 0.013 |
express | 0.009 | palestinian | 0.012 | family | 0.010 | speaker | 0.009 |
u | 0.007 | soldier | 0.010 | difficulty | 0.010 | american | 0.009 |
protest | 0.007 | war | 0.010 | despite | 0.010 | destruction | 0.009 |
policy | 0.007 | hope | 0.010 | determination | 0.010 | government | 0.009 |
gaza | 0.007 | year | 0.007 | bombing | 0.010 | hospital | 0.009 |
state | 0.006 | peace | 0.007 | living | 0.008 | home | 0.007 |
simon | 0.006 | feeling | 0.007 | rubble | 0.008 | terrorist | 0.007 |
military | 0.006 | safety | 0.007 | come | 0.008 | one | 0.007 |
event | 0.006 | civilian | 0.007 | describes | 0.008 | hour | 0.007 |
speaker | 0.006 | ceasefire | 0.007 | killed | 0.008 | displaced | 0.006 |
conflict | 0.006 | call | 0.007 | emphasizes | 0.008 | survivor | 0.006 |
old | 0.005 | clarity | 0.007 | one | 0.008 | five | 0.006 |
year | 0.005 | moral | 0.007 | speaker | 0.008 | house | 0.006 |
hostage | 0.005 | equal | 0.007 | mother | 0.008 | urging | 0.006 |
killing | 0.005 | losing | 0.005 | loved | 0.008 | san | 0.006 |
human | 0.005 | death | 0.005 | closer | 0.008 | disengagement | 0.006 |
discussion | 0.005 | importance | 0.005 | loss | 0.008 | plan | 0.006 |
invitation | 0.005 | emphasizes | 0.005 | plea | 0.008 | people | 0.006 |
captive | 0.026 | conflict | 0.005 | israeli | 0.008 | inside | 0.005 |
Movie Elements Topics of Short Videos | S1 | S2 | S3 | S4 | S5 | S6 | S7 | S8 | |
---|---|---|---|---|---|---|---|---|---|
CNN | Terrorist Attacks | ◎ | ○ | ○ | ○ | △ | ◎ | ◎ | △ |
Western Student Anti-War Movement | ◎ | ◎ | ○ | ◎ | ◎ | ||||
Israeli–Palestinian Military Conflict | ◎ | △ | ◎ | ○ | ◎ | ◎ | △ | ||
Support for Gaza Civilian Demonstrations and Protests | ◎ | ○ | ◎ | ◎ | ◎ | △ | |||
score | 36 | 15 | 4 | 12 | 16 | 36 | 36 | 3 | |
Middle East Eye | Expressing US Support for Israeli Policies | ○ | ◎ | ○ | △ | ◎ | ◎ | ○ | ◎ |
Bombing Hospitals and Reactions to Civilian Casualties in Gaza | ○ | ◎ | ◎ | ◎ | ◎ | ◎ | ○ | ◎ | |
Plight of People in Blockaded Areas | ◎ | ◎ | ◎ | ◎ | ◎ | ◎ | ◎ | ◎ | |
Local Journalists Killed in Bombing | ○ | ◎ | ○ | ○ | ○ | ◎ | ◎ | ◎ | |
score | 18 | 36 | 24 | 22 | 30 | 36 | 24 | 36 |
CNN | Middle East Eye | ||||||
---|---|---|---|---|---|---|---|
No. | Score | Factor | Suggestions | No. | Score | Factor | Suggestions |
S1 | 36 | Famous guys | Employ famous individuals or officers in short videos. | S2 | 36 | Social Media | To use hashtags or hyperlinks in social media to disseminate short videos |
S6 | 36 | Movie title | Crafting precise short video titles to attract viewers. | S6 | 36 | Movie title | Crafting precise short video titles to attract viewers. |
S7 | 36 | Promotion | To mention the name of the media in short videos | S8 | 36 | Music | To use emotionally gripping music or real-world background sounds. |
S5 | 16 | Reviews | The editors should engage more frequently with social media users. | S5 | 30 | Reviews | The editors should engage more frequently with social media users. |
S2 | 15 | Social Media | To use hashtags or hyperlinks in social media to disseminate short videos. | S3 | 24 | Shooting | To perform cinematography techniques in filming. |
S7 | 24 | Promotion | To mention the name of the media in short videos. |
Data | Topic | CNN | Middle East Eye |
---|---|---|---|
Short Videos | #1 | Terrorist Attacks | Expressing US Support for Israeli Policies |
#2 | Western Student Anti-War Movement | Bombing Hospitals and Reactions to Civilian Casualties in Gaza | |
#3 | Israeli–Palestinian Military Conflict | Plight of People in Blockaded Areas | |
#4 | Support for Gaza Civilian Demonstrations and Protests | Local Journalists Killed in Bombing | |
Audience’s Reviews | #1 | History of Conflict and Accusations in Israel and Palestine | Palestinian Rights and Call for War Ceasefire |
#2 | Gaza Blockade and Aid from Southern African Nations | Accusations of Israeli Rule and Injustice | |
#3 | Israeli Incursion and Hamas Counteraction | Western Media Coverage of Israel and Hamas | |
#4 | Accusations of Genocide | Call for Western Countries to Mediate | |
#5 | Critique of Media Bias | Discussion on Israeli Military Entry into Gaza Strip | |
#6 | Call for an End to War | Opposition to Genocide, Support for Palestinian Statehood | |
#7 | - | Condemnation of War, Hope for a Better Future |
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Wu, H.-C.; Jeng, W.-D.; Chen, L.-S.; Ho, C.-C. Developing the NLP-QFD Model to Discover Key Success Factors of Short Videos on Social Media. Appl. Sci. 2024, 14, 4870. https://doi.org/10.3390/app14114870
Wu H-C, Jeng W-D, Chen L-S, Ho C-C. Developing the NLP-QFD Model to Discover Key Success Factors of Short Videos on Social Media. Applied Sciences. 2024; 14(11):4870. https://doi.org/10.3390/app14114870
Chicago/Turabian StyleWu, Hsin-Cheng, Wu-Der Jeng, Long-Sheng Chen, and Cheng-Chin Ho. 2024. "Developing the NLP-QFD Model to Discover Key Success Factors of Short Videos on Social Media" Applied Sciences 14, no. 11: 4870. https://doi.org/10.3390/app14114870
APA StyleWu, H. -C., Jeng, W. -D., Chen, L. -S., & Ho, C. -C. (2024). Developing the NLP-QFD Model to Discover Key Success Factors of Short Videos on Social Media. Applied Sciences, 14(11), 4870. https://doi.org/10.3390/app14114870